Local Decorrelation For Improved Pedestrian Detection
Nam, Woonhyun, Dollar, Piotr, Han, Joon Hee
–Neural Information Processing Systems
Even with the advent of more sophisticated, data-hungry methods, boosted decision trees remain extraordinarily successful for fast rigid object detection, achieving top accuracy on numerous datasets. While effective, most boosted detectors use decision trees with orthogonal (single feature) splits, and the topology of the resulting decision boundary may not be well matched to the natural topology of the data. Given highly correlated data, decision trees with oblique (multiple feature) splits can be effective. Use of oblique splits, however, comes at considerable computational expense. Inspired by recent work on discriminative decorrelation of HOG features, we instead propose an efficient feature transform that removes correlations in local neighborhoods.
Neural Information Processing Systems
Feb-14-2020, 05:43:54 GMT