Better features have been driving the progress of pedestrian detection over the past years. However, as features become richer and higher dimensional, noise and redundancy in the feature sets become bigger problems. These problems slow down learning and can even reduce the performance of the learned model. Current solutions typically exploit dimension reduction techniques. In this paper, we propose a simple but effective feature selection framework for pedestrian detection. Moreover, we introduce occluded pedestrian samples into the training process and combine it with a new feature selection criterion, which enables improved performances for occlusion handling problems. Experimental results on the Caltech Pedestrian dataset demonstrate the...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...
Pedestrian detection in crowded scenes is a challenging problem, because occlusion happens frequentl...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years.However, ...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Mathias M., Benenson R., Timofte R., Van Gool L., ''Handling occlusions with Franken-classifiers'', ...
Detecting partially occluded pedestrians is challenging. A common practice to maximize detection qua...
Pedestrian detection has always been a long-standing research direction in the field of computer vis...
Efficiently and accurately detecting pedestrians plays a crucial role in many vision applications su...
Pedestrian detection is a challenging problem in computer vision, and has achieved impressive progre...
Pedestrian detection is an important branch of computer vision, and it has important applications in...
Pedestrian detection is an essential task in applications such as automotive safety, surveillance, a...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...
Pedestrian detection in crowded scenes is a challenging problem, because occlusion happens frequentl...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Better features have been driving the progress of pedestrian detection over the past years.However, ...
Better features have been driving the progress of pedestrian detection over the past years. However,...
Mathias M., Benenson R., Timofte R., Van Gool L., ''Handling occlusions with Franken-classifiers'', ...
Detecting partially occluded pedestrians is challenging. A common practice to maximize detection qua...
Pedestrian detection has always been a long-standing research direction in the field of computer vis...
Efficiently and accurately detecting pedestrians plays a crucial role in many vision applications su...
Pedestrian detection is a challenging problem in computer vision, and has achieved impressive progre...
Pedestrian detection is an important branch of computer vision, and it has important applications in...
Pedestrian detection is an essential task in applications such as automotive safety, surveillance, a...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...
Pedestrian detection in crowded scenes is a challenging problem, because occlusion happens frequentl...
Pedestrian detection is a challenging problem in computer vision. Especially, a major bottleneck for...