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Fine-grained Walking Activity Recognition
via Driving Recorder Dataset
Hirokatsu KATAOKA, Yoshimitsu AOKI†, Yutaka SATOH
Shoko, OIKAWA‡, Yasuhiro MATSUI‡
National Institute of Advanced Industrial Science and Technology (AIST)
† Keio University
‡ National Traffic Safety and Environment Laboratory (NTSEL)
http://www.hirokatsukataoka.net/
Background
•  ADAS; Advanced Driver Assistance Systems
–  A large amount of technologies have been proposed
–  The pedestrian deaths are on the rise
–  Detection systems, environment, autonomous driving car
@Pedestrian	
  and	
  vehicle	
  detec0on	
   @Lane	
  detec0on	
  (Environment	
  understanding)	
  
@Autonomous	
  driving	
  in	
  Google	
  
ADAS technologies are highly required!
Pedestrian detection
•  Vision-based detection is one of the important techniques
–  Pedestrian detection survey [Benenson+, ECCVW2014]
•  They implemented and compared 40+ detection approaches
–  Deep Learning is applied to detect pedestrians [Sermanet+, CVPR2013]
•  Convolutional neural networks (CNN)
•  Automatic feature training and classifier
Better
Detection rate has been improving
New step toward “pedestrian analysis”
•  High-performance pedestrian localization
–  Task-assistant CNN (TA-CNN) [Tian+, CVPR2015]
•  The framework is consist of CNN feat. & attribute (e.g. background, location)
•  Limitations of pedestrian safety systems
–  Pedestrian detection at present
–  Detection range: width of the vehicle
Going to the next “pedestrian analysis” researches!
Motivation
•  Fine-grained pedestrian activity recognition in addition to
pedestrian detection
–  More detailed activity analysis
–  Pedestrian activity intention understanding
Probabilitymapofdanger
1.0 second is crucial time in ADAS
Why fine-grained?
Walking along a sidewalk
Turning
Crossing a roadway
Process flow
•  Fine-grained walking activity recognition
1.  Pedestrian localization
2.  Activity analysis
Improved dense trajectories (iDT)
Pedestrian detection	
x	
x	
x	
x	
x	
x	
x	
 x	
x	
x	
x	
x	
x	
x	
x	
x	
x	
x	
Trajectory (in t + L frames)	
Feature extraction
(HOG, HOF, MBH, Traj.)	
Bag-of-words (BoW)	
iDT
Detection system
•  Per-frame CNN feature and NMS
–  Region of interesting (ROI)
–  VGGNet feature in the detection problem
–  Non-maximum suppression for combining detection windows
・・・~	
  
~・・・	
  
NMS
Activity Recognition
•  Improved Dense Trajectories (iDT) [Wang+, ICCV2013]
–  Pyramidal image sequences and flow tracking
–  Feature descriptors on trajectories
–  Feature representation with bag-of-words (BoW)
WalkingCrossing Turning
Experiments
•  Fine-grained walking activity recognition
–  Understanding small changes while people walking
•  Walking along a side walk & Crossing a road way
•  Walking straight & turning
•  Walking & riding a bicycle
(a)	
  crossing	
 (b)	
  walking	
 (c)	
  turning	
 (d)	
  bicycle
Datasets and implementations
•  NTSEL dataset & Near-miss dataset
•  Implementation
–  Localization: VGGNet layer-pooling-5
–  Feature: IDT (HOG, HOF, MBH, Traj.)
–  Classifier: Support vector machine (SVM)
(a)	
  crossing	
 (b)	
  walking	
 (c)	
  turning	
 (d)	
  bicycle	
NTSEL dataset Near-miss DR dataset
http://www.jsae.or.jp/hiyari/0907/
Results
•  On the NTSEL and Near-miss DR dataset
Descriptor % on NTSEL % on Near-miss
DT (Traj.) 76.5 77.9
DT (HOF) 93.7 75.9
DT (HOG) 85.6 76.4
DT (MBHx) 87.7 59.3
DT (MBHy) 86.7 60.8
–  Outstanding performance rate with IDT 93.7% on NTSEL and 77.9% on Near-
miss DR dataset
Spatio-temporal analysis
•  Using iDT, temporal direction is analyzed
–  Fewer frames are better in the space-time
–  Sudden motion should be recognized
Demonstration
•  Fine-grained ped. activity recognition on NTSEL dataset
–  Improved Dense Trajectories (93.7%)
Conclusion
•  Fine-grained walking activity analysis for the new step of
pedestrian intention understanding
–  State-of-the-art motion analysis algorithms are implemented
–  High-performance localization and recognition on the traffic datasets
–  Pedestrian analysis are executed in detail
•  More flexible models and intention understanding
–  We need more data in learning step
–  Transition model or more strong temporal feature should be implemented

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【ITSC2015】Fine-grained Walking Activity Recognition via Driving Recorder Dataset

  • 1. Fine-grained Walking Activity Recognition via Driving Recorder Dataset Hirokatsu KATAOKA, Yoshimitsu AOKI†, Yutaka SATOH Shoko, OIKAWA‡, Yasuhiro MATSUI‡ National Institute of Advanced Industrial Science and Technology (AIST) † Keio University ‡ National Traffic Safety and Environment Laboratory (NTSEL) http://www.hirokatsukataoka.net/
  • 2. Background •  ADAS; Advanced Driver Assistance Systems –  A large amount of technologies have been proposed –  The pedestrian deaths are on the rise –  Detection systems, environment, autonomous driving car @Pedestrian  and  vehicle  detec0on   @Lane  detec0on  (Environment  understanding)   @Autonomous  driving  in  Google   ADAS technologies are highly required!
  • 3. Pedestrian detection •  Vision-based detection is one of the important techniques –  Pedestrian detection survey [Benenson+, ECCVW2014] •  They implemented and compared 40+ detection approaches –  Deep Learning is applied to detect pedestrians [Sermanet+, CVPR2013] •  Convolutional neural networks (CNN) •  Automatic feature training and classifier Better Detection rate has been improving
  • 4. New step toward “pedestrian analysis” •  High-performance pedestrian localization –  Task-assistant CNN (TA-CNN) [Tian+, CVPR2015] •  The framework is consist of CNN feat. & attribute (e.g. background, location) •  Limitations of pedestrian safety systems –  Pedestrian detection at present –  Detection range: width of the vehicle Going to the next “pedestrian analysis” researches!
  • 5. Motivation •  Fine-grained pedestrian activity recognition in addition to pedestrian detection –  More detailed activity analysis –  Pedestrian activity intention understanding Probabilitymapofdanger 1.0 second is crucial time in ADAS Why fine-grained? Walking along a sidewalk Turning Crossing a roadway
  • 6. Process flow •  Fine-grained walking activity recognition 1.  Pedestrian localization 2.  Activity analysis Improved dense trajectories (iDT) Pedestrian detection x x x x x x x x x x x x x x x x x x Trajectory (in t + L frames) Feature extraction (HOG, HOF, MBH, Traj.) Bag-of-words (BoW) iDT
  • 7. Detection system •  Per-frame CNN feature and NMS –  Region of interesting (ROI) –  VGGNet feature in the detection problem –  Non-maximum suppression for combining detection windows ・・・~   ~・・・   NMS
  • 8. Activity Recognition •  Improved Dense Trajectories (iDT) [Wang+, ICCV2013] –  Pyramidal image sequences and flow tracking –  Feature descriptors on trajectories –  Feature representation with bag-of-words (BoW) WalkingCrossing Turning
  • 9. Experiments •  Fine-grained walking activity recognition –  Understanding small changes while people walking •  Walking along a side walk & Crossing a road way •  Walking straight & turning •  Walking & riding a bicycle (a)  crossing (b)  walking (c)  turning (d)  bicycle
  • 10. Datasets and implementations •  NTSEL dataset & Near-miss dataset •  Implementation –  Localization: VGGNet layer-pooling-5 –  Feature: IDT (HOG, HOF, MBH, Traj.) –  Classifier: Support vector machine (SVM) (a)  crossing (b)  walking (c)  turning (d)  bicycle NTSEL dataset Near-miss DR dataset http://www.jsae.or.jp/hiyari/0907/
  • 11. Results •  On the NTSEL and Near-miss DR dataset Descriptor % on NTSEL % on Near-miss DT (Traj.) 76.5 77.9 DT (HOF) 93.7 75.9 DT (HOG) 85.6 76.4 DT (MBHx) 87.7 59.3 DT (MBHy) 86.7 60.8 –  Outstanding performance rate with IDT 93.7% on NTSEL and 77.9% on Near- miss DR dataset
  • 12. Spatio-temporal analysis •  Using iDT, temporal direction is analyzed –  Fewer frames are better in the space-time –  Sudden motion should be recognized
  • 13. Demonstration •  Fine-grained ped. activity recognition on NTSEL dataset –  Improved Dense Trajectories (93.7%)
  • 14. Conclusion •  Fine-grained walking activity analysis for the new step of pedestrian intention understanding –  State-of-the-art motion analysis algorithms are implemented –  High-performance localization and recognition on the traffic datasets –  Pedestrian analysis are executed in detail •  More flexible models and intention understanding –  We need more data in learning step –  Transition model or more strong temporal feature should be implemented