Kernel Descriptors for Visual Recognition
Bo, Liefeng, Ren, Xiaofeng, Fox, Dieter
–Neural Information Processing Systems
The design of low-level image features is critical for computer vision algorithms. Orientation histograms, such as those in SIFT [16] and HOG [3], are the most successful and popular features for visual object and scene recognition. We highlight thekernel view of orientation histograms, and show that they are equivalent to a certain type of match kernels over image patches. This novel view allows us to design a family of kernel descriptors which provide a unified and principled frameworkto turn pixel attributes (gradient, color, local binary pattern, etc.) into compact patch-level features. In particular, we introduce three types of match kernels to measure similarities between image patches, and construct compact low-dimensional kernel descriptors from these match kernels using kernel principal componentanalysis (KPCA) [23]. Kernel descriptors are easy to design and can turn any type of pixel attribute into patch-level features. They outperform carefully tuned and sophisticated features including SIFT and deep belief networks.
Neural Information Processing Systems
Dec-31-2010
- Country:
- North America > United States > Washington > King County > Seattle (0.14)
- Genre:
- Research Report (0.46)
- Technology: