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Image	
  Analysis	
  and	
  Interpretation	
  
28/06/13	
  
Melanie	
  Torres	
  Bisbal	
  
¡  Ranking	
  and	
  retrieval	
  of	
  medical	
  images	
  
¡  Retrieve	
   information	
   from	
   a	
   database	
   that	
   the	
  
images	
  are	
  similar	
  is	
  much	
  difficult	
  
¡  Paper	
   proposed	
   a	
   new	
   algorithm	
   with	
   the	
  
following	
  concepts:	
  
§  Integral	
  image	
  
§  Haar	
  like	
  features	
  
§  Adaboost	
  
¡  Extracting	
  and	
  understanding	
  the	
  structure	
  and	
  
characteristics	
  of	
  medical	
  images	
  is	
  challenging	
  
¡  A	
   typical	
   radiology	
   department	
   generates	
  
between	
  100,000	
  to	
  10	
  million	
  images	
  per	
  year	
  
¡  Applications	
  in	
  the	
  detection	
  and	
  classification	
  
¡  Also	
  specific	
  applications	
  in	
  image	
  retrieval	
  with	
  
pulmonary	
  nodules	
  
¡  Retrieve	
  and	
  sort	
  the	
  information	
  in	
  real	
  time	
  
¡  Since	
  80	
  has	
  been	
  a	
  research	
  topic	
  
¡  But	
  the	
  field	
  of	
  biomedical	
  imaging	
  is	
  in	
  a	
  very	
  
early	
  stage	
  
¡  Images	
  to	
  train	
  and	
  test	
  the	
  proposed	
  algorithm	
  
are	
  taken	
  from	
  the	
  database	
  of	
  IRMA	
  (Image	
  
Retrieval	
  in	
  Medical	
  Applications)	
  
¡  Use	
  a	
  subset	
  of	
  images	
  to	
  train	
  the	
  different	
  
categories	
  and	
  remove	
  Haar-­‐like	
  features	
  to	
  
build	
  specific	
  models	
  
¡  One	
  of	
  the	
  biggest	
  problems	
  is	
  precisely	
  recover	
  
the	
   characteristics	
   that	
   define	
   the	
   visual	
  
similarity	
   of	
   the	
   anatomical	
   structure	
   of	
   the	
  
different	
  categories	
  
¡  Generally	
   have	
   used	
   co-­‐occurrence	
   matrix	
   of	
  
gray,	
  Gabor	
  filters,	
  etc..	
  
¡  In	
   this	
   paper	
   are	
   based	
   more	
   on	
   reducing	
   the	
  
time	
  a	
  given	
  question	
  (query)	
  
¡  Haar-­‐like	
  features,	
  proposed	
  by	
  Viola	
  and	
  Jones	
  
¡  Two	
  advantatges:	
  
§  The	
  system	
  can	
  be	
  used	
  for	
  a	
  wide	
  range	
  of	
  biomedical	
  
image	
  retrieval	
  as	
  a	
  tumor	
  
§  Recovery	
  time	
  it	
  takes	
  significament	
  is	
  low	
  in	
  
comparison	
  to	
  other	
  methods	
  
¡  The	
   key	
   steps	
   to	
   construct	
   the	
   algorithm	
  
described	
  in	
  the	
  paper	
  are:	
  
§  Efficient	
  extraction	
  of	
  simple	
  wavelets	
  (Haar)	
  
§  Train	
  the	
  boosting	
  algorithm	
  applied	
  to	
  each	
  category	
  
§  Calculate	
  the	
  closest	
  similarity	
  given	
  a	
  query	
  
¡  Efficient	
  computation	
  from	
  Integral	
  Image	
  
¡  In	
   this	
   paper	
   implemented	
   using	
   the	
   Intel	
  
OpenCV	
  @:	
  
¡  The	
  features	
  are:	
  
¡  In	
  the	
  training	
  phase	
  boosting	
  applied	
  to	
  each	
  
separate	
  category	
  to	
  find	
  the	
  weights	
  and	
  the	
  
weak	
  classifiers	
  
¡  For	
  a	
  query	
  in	
  the	
  test	
  phase	
  the	
  system	
  will	
  
identify	
  the	
  class	
  it	
  belongs	
  to	
  and	
  return	
  the	
  top	
  
ranking	
  images	
  repository	
  
¡  To	
  look	
  at	
  the	
  results	
  is	
  calculated:	
  
¡  Chandan	
  K.	
  Reddy	
  and	
  Fahima	
  A.	
  Bhuyan,	
  
Retrieval	
  and	
  Ranking	
  of	
  Biomedical	
  Images	
  
using	
  Boosted	
  Haar	
  Features	
  
http://ieeexplore.ieee.org/xpl/login.jsp?
tp=&arnumber=4696834&url=http%3A%2F
%2Fieeexplore.ieee.org%2Fxpls
%2Fabs_all.jsp%3Farnumber%3D4696834	
  	
  

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Retrieval and Ranking of Biomedical Images using Boosted Haar Features

  • 1. Image  Analysis  and  Interpretation   28/06/13   Melanie  Torres  Bisbal  
  • 2. ¡  Ranking  and  retrieval  of  medical  images   ¡  Retrieve   information   from   a   database   that   the   images  are  similar  is  much  difficult   ¡  Paper   proposed   a   new   algorithm   with   the   following  concepts:   §  Integral  image   §  Haar  like  features   §  Adaboost  
  • 3. ¡  Extracting  and  understanding  the  structure  and   characteristics  of  medical  images  is  challenging   ¡  A   typical   radiology   department   generates   between  100,000  to  10  million  images  per  year   ¡  Applications  in  the  detection  and  classification   ¡  Also  specific  applications  in  image  retrieval  with   pulmonary  nodules   ¡  Retrieve  and  sort  the  information  in  real  time  
  • 4. ¡  Since  80  has  been  a  research  topic   ¡  But  the  field  of  biomedical  imaging  is  in  a  very   early  stage   ¡  Images  to  train  and  test  the  proposed  algorithm   are  taken  from  the  database  of  IRMA  (Image   Retrieval  in  Medical  Applications)   ¡  Use  a  subset  of  images  to  train  the  different   categories  and  remove  Haar-­‐like  features  to   build  specific  models  
  • 5. ¡  One  of  the  biggest  problems  is  precisely  recover   the   characteristics   that   define   the   visual   similarity   of   the   anatomical   structure   of   the   different  categories   ¡  Generally   have   used   co-­‐occurrence   matrix   of   gray,  Gabor  filters,  etc..   ¡  In   this   paper   are   based   more   on   reducing   the   time  a  given  question  (query)  
  • 6. ¡  Haar-­‐like  features,  proposed  by  Viola  and  Jones   ¡  Two  advantatges:   §  The  system  can  be  used  for  a  wide  range  of  biomedical   image  retrieval  as  a  tumor   §  Recovery  time  it  takes  significament  is  low  in   comparison  to  other  methods  
  • 7.
  • 8. ¡  The   key   steps   to   construct   the   algorithm   described  in  the  paper  are:   §  Efficient  extraction  of  simple  wavelets  (Haar)   §  Train  the  boosting  algorithm  applied  to  each  category   §  Calculate  the  closest  similarity  given  a  query  
  • 9. ¡  Efficient  computation  from  Integral  Image   ¡  In   this   paper   implemented   using   the   Intel   OpenCV  @:   ¡  The  features  are:  
  • 10.
  • 11. ¡  In  the  training  phase  boosting  applied  to  each   separate  category  to  find  the  weights  and  the   weak  classifiers   ¡  For  a  query  in  the  test  phase  the  system  will   identify  the  class  it  belongs  to  and  return  the  top   ranking  images  repository   ¡  To  look  at  the  results  is  calculated:  
  • 12.
  • 13.
  • 14.
  • 15. ¡  Chandan  K.  Reddy  and  Fahima  A.  Bhuyan,   Retrieval  and  Ranking  of  Biomedical  Images   using  Boosted  Haar  Features   http://ieeexplore.ieee.org/xpl/login.jsp? tp=&arnumber=4696834&url=http%3A%2F %2Fieeexplore.ieee.org%2Fxpls %2Fabs_all.jsp%3Farnumber%3D4696834