DocumentCode
3652265
Title
Beyond Hard Negative Mining: Efficient Detector Learning via Block-Circulant Decomposition
Author
João F. ;João ;Rui Caseiro;Jorge Batista
Author_Institution
Inst. of Syst. &
fYear
2013
Firstpage
2760
Lastpage
2767
Abstract
Competitive sliding window detectors require vast training sets. Since a pool of natural images provides a nearly endless supply of negative samples, in the form of patches at different scales and locations, training with all the available data is considered impractical. A staple of current approaches is hard negative mining, a method of selecting relevant samples, which is nevertheless expensive. Given that samples at slightly different locations have overlapping support, there seems to be an enormous amount of duplicated work. It is natural, then, to ask whether these redundancies can be eliminated. In this paper, we show that the Gram matrix describing such data is block-circulant. We derive a transformation based on the Fourier transform that block-diagonalizes the Gram matrix, at once eliminating redundancies and partitioning the learning problem. This decomposition is valid for any dense features and several learning algorithms, and takes full advantage of modern parallel architectures. Surprisingly, it allows training with all the potential samples in sets of thousands of images. By considering the full set, we generate in a single shot the optimal solution, which is usually obtained only after several rounds of hard negative mining. We report speed gains on Caltech Pedestrians and INRIA Pedestrians of over an order of magnitude, allowing training on a desktop computer in a couple of minutes.
Keywords
"Training","Matrix decomposition","Support vector machines","Fourier transforms","Vectors","Detectors","Redundancy"
Publisher
ieee
Conference_Titel
Computer Vision (ICCV), 2013 IEEE International Conference on
ISSN
1550-5499
Electronic_ISBN
2380-7504
Type
conf
DOI
10.1109/ICCV.2013.343
Filename
6751454
Link To Document