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799 bytes added ,  17:03, 27 September 2012
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| October 11
 
| October 11
| ''(ECCV week, no meeting)''
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| Kotaro Hara
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| TBA
 
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| October 18
 
| October 18
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In this detection problem, the anomalies have very well defined structure and therefore, they can be represented sparsely in some subspace.  In addition, the image background has very structured texture, so it is sparse with respect to a different frame.  Theoretical results in mathematical geometric separation show that it is possible to separate these two image components (regular texture from contours) by minimizing the L1 norm the coefficients in geometrically complementary frames.  More recently, it has been shown that this problem can be solved efficiently using thresholding and total variation regularization.  Our experiments show that the sparse coefficients extracted from the contour component can be converted into feature vectors that can be used to cluster and detect these anomalies.
 
In this detection problem, the anomalies have very well defined structure and therefore, they can be represented sparsely in some subspace.  In addition, the image background has very structured texture, so it is sparse with respect to a different frame.  Theoretical results in mathematical geometric separation show that it is possible to separate these two image components (regular texture from contours) by minimizing the L1 norm the coefficients in geometrically complementary frames.  More recently, it has been shown that this problem can be solved efficiently using thresholding and total variation regularization.  Our experiments show that the sparse coefficients extracted from the contour component can be converted into feature vectors that can be used to cluster and detect these anomalies.
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===TBA===
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Speaker: [http://kotarohara.com/ Kotaro Hara] -- Date: October 11, 2012
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Poorly maintained sidewalks, missing curb ramps, and other obstacles pose considerable accessibility challenges; however, there are currently few, if any, mechanisms to determine accessible areas of a city a priori.
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In the first half of the presentation, I will talk about our investigation of the feasibility of using untrained crowd workers from Amazon Mechanical Turk (turkers) to find, label, and assess sidewalk accessibility problems in Google Street View imagery. Our work effectively demonstrates a promising new, highly scalable method for acquiring knowledge about sidewalk accessibility.
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In the latter half, I will discuss the future works as well as open research questions related in the field of computer vision.
    
===TBA===
 
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