Improving Spatial Support for Objects via Multiple Segmentations

  title={Improving Spatial Support for Objects via Multiple Segmentations},
  author={Tomasz Malisiewicz and Alexei A. Efros},
Sliding window scanning is the dominant paradigm in object recognition research today. But while much success has been reported in detecting several rectangular-shaped object classes (i.e. faces, cars, pedestrians), results have been much less impressive for more general types of objects. Several researchers have advocated the use of image segmentation as a way to get a better spatial support for objects. In this paper, our aim is to address this issue by studying the following two questions: 1… CONTINUE READING
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Toward Category-Level Object Recognition

  • J. Ponce, M. Hebert, C. Schmid, A. Zisserman
  • Springer-Verlag Lecture Notes in Computer Science…
  • 2006
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