SlideShare ist ein Scribd-Unternehmen logo
1 von 35
Traffic
Sign Board
Classification
ImplementationReview
Under Guidance of :
YSowjanya
Assistant Professor
IT department
Abstract
The universe is governed by a combination of several
laws which are environmental, physical and many
more. Likewise, mankind has created a set of traffic
rules, to guide the people travelling and to regulate
the traffic flow.
Traffic Sign boards are a great source of avoiding
accidents, when observed and followed properly.
It is very difficult for a driver to notice all the sign
boards and act accordingly.
An automatic recognition system is proposed to
recognise the sign boards and alert the driver by a
voice message.
The project can be extremely useful for autonomous
vehicles as it detects signs and helps drivers take the
necessary actions.
Existing
System/
Methodology
Summary of
some
reportedTSR
applications:
A TSRvendor support process can aid the operators by alerting
forward road signparticulars, along with prohibitions, warnings and
restrictions.
TSRsystems are avery crucial part of driverless cars getting them
aware of the current publicroad traffic regulations.
By sensingthose types of signsforward,TSRcanreduce energy intake
by finding ideal traffic signsof velocity, reducing the useof breakage.
The
drawbacksof
existing
systemare:-
During internet connectivity issuesor in unchartered terrain.
Smallfuzzy traffic signsand high-resolutionpictures. During bad
weather and innights.
Colordetection in RGB.
Costlier installation.
*TSR –Traffic Sign Recognition
Proposed
System
The basic idea of proposed system is to provide alertness to the
driver about the presence of traffic signboard at aparticular
distance apart. It generates awarning to the driver in advance of
any danger. The warning allows the driver to take appropriate
actions in order to avoid the accident.
The system takes continuous video input from the console
monitor or camerainstalled on the car'sbonnet.The underlying
algorithm extracts the features of the input image and matches
them with anexisting library of traffic sign.
The output is fed to the driving assistance system and in turn
drives the car accordingly.Wedeveloped this intelligent system
using MachineLearning.
This device will take camerafeeds and upgrade the system
instantaneously.
Functionaland
Non-
Functional
Requirements
System RequirementStudy
Functional
Requirements
Preprocessingwill checkcontrast,brightness,and clarity.This block will
makesure the image is readyto have imageprocessingdone to it.
The application of processing algorithms shall take the
preprocessed image and findcolors of interest and look forshapes
relating to the sign or signs we aresearching for.
The classify sign block shall take the regions of interest passed from
the algorithms block.These regions will be analyzed and used to
compare to ‘templates’ of known signs.
The highlight image subsystem shall create some sort of
distinguishing box or highlight aroundthe actual sign.
The recommend appropriate action subsystem shall give a
recommended action as an output based on the type of sign
encountered.
The software to be developed must:
1. Detect only road sign boards.
2. Ignore all other objects except road sign boards.
3. Recognize the road signs correctly.
4. Display the road sign in textual format.
5. Convert the text output to voice output.
Non-
Functional
Requirements
Design Elements
04
Traffic Sign
Recognition
Detected sign is extracted and fed to
the classifier model to classify the sign
into one of the 43 trainedsigns.
05
Text-to-Speech conversion
Recognized traffic sign is sent to TTS
module for getting voice alert through
car speakers.
03
Traffic Sign Detection
Localize the sign board in the frame
and extracting it as a singlesign.
01
Model building
CNN model is built on GTSRB and
tested with 98% accuracy. 02
Image Input
upload the real-time image and extract
the patterns.
MODULES
Unified Modelling Language
(UML) Diagrams
CLASS DIAGRAM
COLLABRATION DIAGRAM
Use Case
Diagram
STATE CHART DIAGRAM
Sequence Diagram
COMPONENT DIAGRAM
DEPLOYMENT DIAGRAM
System
Architecture
IMPLEMENTATION SCREENSHOTS
Experimental Results
Model
Summary
Epoch
Summary
Accuracyplot v/sLossplot
S.N
o.
Meta Sign Sign Actual Predicted Test
1 General Caution General Caution Pass
2 Children Crossing Children
Crossing
Pass
3 Road Work Road Work Pass
Test
Cases
S.N
o.
Meta Sign Sign Actual Predicted Test
4
Round About
Mandatory
Round About
Mandatory
Pass
5 No passing No passing Pass
6 Turn Left ahead Turn Left ahead Pass
Test
Cases
This system is used to savethe valuable life by preventing
accidents due to the negligence of traffic signsboards.
At present 40%of deaths that aretaking place these days
aremainly due to the road accidents.
People die in these road accidents which is agreat loss for
the family. Our project provides maximum efficiency and
is userfriendly.
This project mainly focuses on majority of the society who
travel especially the night travelers and it also helps traffic
police to reduce the traffic issues.
The main idea for this project is from the road accidents
that take place due to driver’s ignorance of traffic signs.
Conclusion
The Project should be extended to implement real-time.
Traffic sign extraction from the video input is the next work
to be done in this project.
Response time should be improved to a greater extent.
An efficient voice alert should be developed after
classification of the sign label.
FutureScope
References
• Aparna A. Dalve, Sankirti S. Shiravale “Real Time Traffic Signboard Detection and
Recognition from Street Level Imagery for Smart Vehicle” International Journal of
Computer Applications (0975 – 8887) Volume 135 –No.1, February 2016.
• POONAM.S.SHETAKE, S.A.PATIL, P.M JADHAV,“REVIEW OF TEXT TO
SPEECH CONVERSION METHODS” International Journal of Industrial Electronics
and Electrical Engineering, ISSN: 2347-6982.
• Anushree. A. S , Himanshu Kumar , Idah Iram , Kumar Divyam , Rajeshwari. J
“Automatic Signboard Detection System by the Vehicles” International Journal of
Engineering Science and Computing, May 2019.
• Yuan Yuan, IEEE, Zhitong Xiong, and Qi Wang “An Incremental Framework for Video-
Based Traffic Sign Detection, Tracking, and Recognition” IEEE TRANSACTIONS ON
INTELLIGENT TRANSPORTATION SYSTEMS, VOL. 18, NO. 7, JULY 2017.
• Safat B. Wali, Mahammad A. Hannan, Aini Hussain, and Salina A. Samad “An
Automatic Traffic Sign Detection and Recognition System Based on Colour
Segmentation, Shape Matching, and SVM” Hindawi Publishing Corporation
Mathematical Problems in Engineering Volume 2015, Article ID 250461, 11 pages
http://dx.doi.org/10.1155/2015/250461.
Thankyou
• G.Harivardhan Reddy –19H65A1201
• Sandeep Diviti –19H65A1203
• N.Southen Kumar –19H65A1206

Weitere ähnliche Inhalte

Ähnlich wie Traffic Signboard Classification with Voice alert to the driver.pptx

IRJET- Simulation based Automatic Traffic Controlling System
IRJET- Simulation based Automatic Traffic Controlling SystemIRJET- Simulation based Automatic Traffic Controlling System
IRJET- Simulation based Automatic Traffic Controlling SystemIRJET Journal
 
Accident Avoidance by using Road Sign Recognition System
Accident Avoidance by using Road Sign Recognition SystemAccident Avoidance by using Road Sign Recognition System
Accident Avoidance by using Road Sign Recognition SystemIRJET Journal
 
Traffic sign recognition
Traffic sign recognitionTraffic sign recognition
Traffic sign recognitionAKR Education
 
IRJET- Number Plate Extraction from Vehicle Front View Image using Image ...
IRJET-  	  Number Plate Extraction from Vehicle Front View Image using Image ...IRJET-  	  Number Plate Extraction from Vehicle Front View Image using Image ...
IRJET- Number Plate Extraction from Vehicle Front View Image using Image ...IRJET Journal
 
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...IRJET Journal
 
Vehicle Traffic Analysis using CNN Algorithm
Vehicle Traffic Analysis using CNN AlgorithmVehicle Traffic Analysis using CNN Algorithm
Vehicle Traffic Analysis using CNN AlgorithmIRJET Journal
 
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...IRJET Journal
 
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...IRJET Journal
 
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...IRJET Journal
 
Real-time traffic sign detection and recognition using Raspberry Pi
Real-time traffic sign detection and recognition using Raspberry Pi Real-time traffic sign detection and recognition using Raspberry Pi
Real-time traffic sign detection and recognition using Raspberry Pi IJECEIAES
 
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...Associate Professor in VSB Coimbatore
 
IRJET - Unmanned Traffic Signal Monitoring System
IRJET - Unmanned Traffic Signal Monitoring SystemIRJET - Unmanned Traffic Signal Monitoring System
IRJET - Unmanned Traffic Signal Monitoring SystemIRJET Journal
 
Vertical-Edge-Based Car-License-Plate Detection Method
Vertical-Edge-Based Car-License-Plate Detection MethodVertical-Edge-Based Car-License-Plate Detection Method
Vertical-Edge-Based Car-License-Plate Detection MethodIOSRJEEE
 
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...IRJET Journal
 
Vehicle Number Plate Recognition System
Vehicle Number Plate Recognition SystemVehicle Number Plate Recognition System
Vehicle Number Plate Recognition Systemprashantdahake
 
IRJET- Vehicle Number Plate Recognition System
IRJET- Vehicle Number Plate Recognition SystemIRJET- Vehicle Number Plate Recognition System
IRJET- Vehicle Number Plate Recognition SystemIRJET Journal
 
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...IRJET Journal
 
Smart Parking Solution using Camera Networks and Real-time Computer Vision
Smart Parking Solution using Camera Networks and Real-time Computer VisionSmart Parking Solution using Camera Networks and Real-time Computer Vision
Smart Parking Solution using Camera Networks and Real-time Computer VisionIRJET Journal
 
Smart Algorithm for Traffic Congestion and Control
Smart  Algorithm for Traffic Congestion and ControlSmart  Algorithm for Traffic Congestion and Control
Smart Algorithm for Traffic Congestion and ControlIRJET Journal
 

Ähnlich wie Traffic Signboard Classification with Voice alert to the driver.pptx (20)

IRJET- Simulation based Automatic Traffic Controlling System
IRJET- Simulation based Automatic Traffic Controlling SystemIRJET- Simulation based Automatic Traffic Controlling System
IRJET- Simulation based Automatic Traffic Controlling System
 
Accident Avoidance by using Road Sign Recognition System
Accident Avoidance by using Road Sign Recognition SystemAccident Avoidance by using Road Sign Recognition System
Accident Avoidance by using Road Sign Recognition System
 
Traffic sign recognition
Traffic sign recognitionTraffic sign recognition
Traffic sign recognition
 
IRJET- Number Plate Extraction from Vehicle Front View Image using Image ...
IRJET-  	  Number Plate Extraction from Vehicle Front View Image using Image ...IRJET-  	  Number Plate Extraction from Vehicle Front View Image using Image ...
IRJET- Number Plate Extraction from Vehicle Front View Image using Image ...
 
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...
Smart Traffic Congestion Control System: Leveraging Machine Learning for Urba...
 
Vehicle Traffic Analysis using CNN Algorithm
Vehicle Traffic Analysis using CNN AlgorithmVehicle Traffic Analysis using CNN Algorithm
Vehicle Traffic Analysis using CNN Algorithm
 
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...
IRJET- Congestion Reducing System through Sensors, Image Processors and Vanet...
 
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...
License Plate Recognition System for Moving Vehicles Using ­Laplacian Edge De...
 
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...
Implementation of Various Machine Learning Algorithms for Traffic Sign Detect...
 
Real-time traffic sign detection and recognition using Raspberry Pi
Real-time traffic sign detection and recognition using Raspberry Pi Real-time traffic sign detection and recognition using Raspberry Pi
Real-time traffic sign detection and recognition using Raspberry Pi
 
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...
Real Time Road Blocker Detection and Distance Calculation for Autonomous Vehi...
 
IRJET - Unmanned Traffic Signal Monitoring System
IRJET - Unmanned Traffic Signal Monitoring SystemIRJET - Unmanned Traffic Signal Monitoring System
IRJET - Unmanned Traffic Signal Monitoring System
 
Vertical-Edge-Based Car-License-Plate Detection Method
Vertical-Edge-Based Car-License-Plate Detection MethodVertical-Edge-Based Car-License-Plate Detection Method
Vertical-Edge-Based Car-License-Plate Detection Method
 
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...
IRJET- Prediction of Traffic Signs for Automated Vehicles using Convolutional...
 
Ijetcas14 395
Ijetcas14 395Ijetcas14 395
Ijetcas14 395
 
Vehicle Number Plate Recognition System
Vehicle Number Plate Recognition SystemVehicle Number Plate Recognition System
Vehicle Number Plate Recognition System
 
IRJET- Vehicle Number Plate Recognition System
IRJET- Vehicle Number Plate Recognition SystemIRJET- Vehicle Number Plate Recognition System
IRJET- Vehicle Number Plate Recognition System
 
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...
IRJET- Artificial Intelligence Based Smart Traffic Management System using Vi...
 
Smart Parking Solution using Camera Networks and Real-time Computer Vision
Smart Parking Solution using Camera Networks and Real-time Computer VisionSmart Parking Solution using Camera Networks and Real-time Computer Vision
Smart Parking Solution using Camera Networks and Real-time Computer Vision
 
Smart Algorithm for Traffic Congestion and Control
Smart  Algorithm for Traffic Congestion and ControlSmart  Algorithm for Traffic Congestion and Control
Smart Algorithm for Traffic Congestion and Control
 

Kürzlich hochgeladen

Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsContinuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsLeah Henrickson
 
Microsoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireMicrosoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireExakis Nelite
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIES VE
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceSamy Fodil
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandIES VE
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Patrick Viafore
 
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdfBreaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdfUK Journal
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfFIDO Alliance
 
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdfLinux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdfFIDO Alliance
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?Mark Billinghurst
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераMark Opanasiuk
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGDSC PJATK
 
AI mind or machine power point presentation
AI mind or machine power point presentationAI mind or machine power point presentation
AI mind or machine power point presentationyogeshlabana357357
 
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyUXDXConf
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024Lorenzo Miniero
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxJennifer Lim
 
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxBT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxNeo4j
 
Syngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessUXDXConf
 

Kürzlich hochgeladen (20)

Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsContinuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
 
Microsoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireMicrosoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - Questionnaire
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & Ireland
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024
 
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdfBreaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdfLinux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
AI mind or machine power point presentation
AI mind or machine power point presentationAI mind or machine power point presentation
AI mind or machine power point presentation
 
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System Strategy
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
 
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxBT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
 
Syngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdf
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
 

Traffic Signboard Classification with Voice alert to the driver.pptx

  • 1. Traffic Sign Board Classification ImplementationReview Under Guidance of : YSowjanya Assistant Professor IT department
  • 2. Abstract The universe is governed by a combination of several laws which are environmental, physical and many more. Likewise, mankind has created a set of traffic rules, to guide the people travelling and to regulate the traffic flow. Traffic Sign boards are a great source of avoiding accidents, when observed and followed properly. It is very difficult for a driver to notice all the sign boards and act accordingly. An automatic recognition system is proposed to recognise the sign boards and alert the driver by a voice message. The project can be extremely useful for autonomous vehicles as it detects signs and helps drivers take the necessary actions.
  • 3. Existing System/ Methodology Summary of some reportedTSR applications: A TSRvendor support process can aid the operators by alerting forward road signparticulars, along with prohibitions, warnings and restrictions. TSRsystems are avery crucial part of driverless cars getting them aware of the current publicroad traffic regulations. By sensingthose types of signsforward,TSRcanreduce energy intake by finding ideal traffic signsof velocity, reducing the useof breakage. The drawbacksof existing systemare:- During internet connectivity issuesor in unchartered terrain. Smallfuzzy traffic signsand high-resolutionpictures. During bad weather and innights. Colordetection in RGB. Costlier installation. *TSR –Traffic Sign Recognition
  • 4. Proposed System The basic idea of proposed system is to provide alertness to the driver about the presence of traffic signboard at aparticular distance apart. It generates awarning to the driver in advance of any danger. The warning allows the driver to take appropriate actions in order to avoid the accident. The system takes continuous video input from the console monitor or camerainstalled on the car'sbonnet.The underlying algorithm extracts the features of the input image and matches them with anexisting library of traffic sign. The output is fed to the driving assistance system and in turn drives the car accordingly.Wedeveloped this intelligent system using MachineLearning. This device will take camerafeeds and upgrade the system instantaneously.
  • 6. Functional Requirements Preprocessingwill checkcontrast,brightness,and clarity.This block will makesure the image is readyto have imageprocessingdone to it. The application of processing algorithms shall take the preprocessed image and findcolors of interest and look forshapes relating to the sign or signs we aresearching for. The classify sign block shall take the regions of interest passed from the algorithms block.These regions will be analyzed and used to compare to ‘templates’ of known signs. The highlight image subsystem shall create some sort of distinguishing box or highlight aroundthe actual sign. The recommend appropriate action subsystem shall give a recommended action as an output based on the type of sign encountered.
  • 7. The software to be developed must: 1. Detect only road sign boards. 2. Ignore all other objects except road sign boards. 3. Recognize the road signs correctly. 4. Display the road sign in textual format. 5. Convert the text output to voice output. Non- Functional Requirements
  • 9. 04 Traffic Sign Recognition Detected sign is extracted and fed to the classifier model to classify the sign into one of the 43 trainedsigns. 05 Text-to-Speech conversion Recognized traffic sign is sent to TTS module for getting voice alert through car speakers. 03 Traffic Sign Detection Localize the sign board in the frame and extracting it as a singlesign. 01 Model building CNN model is built on GTSRB and tested with 98% accuracy. 02 Image Input upload the real-time image and extract the patterns. MODULES
  • 20.
  • 21.
  • 22.
  • 23.
  • 24.
  • 29.
  • 30. S.N o. Meta Sign Sign Actual Predicted Test 1 General Caution General Caution Pass 2 Children Crossing Children Crossing Pass 3 Road Work Road Work Pass Test Cases
  • 31. S.N o. Meta Sign Sign Actual Predicted Test 4 Round About Mandatory Round About Mandatory Pass 5 No passing No passing Pass 6 Turn Left ahead Turn Left ahead Pass Test Cases
  • 32. This system is used to savethe valuable life by preventing accidents due to the negligence of traffic signsboards. At present 40%of deaths that aretaking place these days aremainly due to the road accidents. People die in these road accidents which is agreat loss for the family. Our project provides maximum efficiency and is userfriendly. This project mainly focuses on majority of the society who travel especially the night travelers and it also helps traffic police to reduce the traffic issues. The main idea for this project is from the road accidents that take place due to driver’s ignorance of traffic signs. Conclusion
  • 33. The Project should be extended to implement real-time. Traffic sign extraction from the video input is the next work to be done in this project. Response time should be improved to a greater extent. An efficient voice alert should be developed after classification of the sign label. FutureScope
  • 34. References • Aparna A. Dalve, Sankirti S. Shiravale “Real Time Traffic Signboard Detection and Recognition from Street Level Imagery for Smart Vehicle” International Journal of Computer Applications (0975 – 8887) Volume 135 –No.1, February 2016. • POONAM.S.SHETAKE, S.A.PATIL, P.M JADHAV,“REVIEW OF TEXT TO SPEECH CONVERSION METHODS” International Journal of Industrial Electronics and Electrical Engineering, ISSN: 2347-6982. • Anushree. A. S , Himanshu Kumar , Idah Iram , Kumar Divyam , Rajeshwari. J “Automatic Signboard Detection System by the Vehicles” International Journal of Engineering Science and Computing, May 2019. • Yuan Yuan, IEEE, Zhitong Xiong, and Qi Wang “An Incremental Framework for Video- Based Traffic Sign Detection, Tracking, and Recognition” IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, VOL. 18, NO. 7, JULY 2017. • Safat B. Wali, Mahammad A. Hannan, Aini Hussain, and Salina A. Samad “An Automatic Traffic Sign Detection and Recognition System Based on Colour Segmentation, Shape Matching, and SVM” Hindawi Publishing Corporation Mathematical Problems in Engineering Volume 2015, Article ID 250461, 11 pages http://dx.doi.org/10.1155/2015/250461.
  • 35. Thankyou • G.Harivardhan Reddy –19H65A1201 • Sandeep Diviti –19H65A1203 • N.Southen Kumar –19H65A1206