It is shown that the proposed modification of the post-processing phase that uses high-scoring object detections from nearby frames to boost scores of weaker detections within the same clip obtains superior results to state-of-the-art single image object detection techniques.
Video object detection is challenging because objects that are easily detected in one frame may be difficult to detect in another frame within the same clip. Recently, there have been major advances for doing object detection in a single image. These methods typically contain three phases: (i) object proposal generation (ii) object classification and (iii) post-processing. We propose a modification of the post-processing phase that uses high-scoring object detections from nearby frames to boost scores of weaker detections within the same clip. We show that our method obtains superior results to state-of-the-art single image object detection techniques. Our method placed 3rd in the video object detection (VID) task of the ImageNet Large Scale Visual Recognition Challenge 2015 (ILSVRC2015).
Prajit Ramachandran
3 papers
Humphrey Shi
13 papers
M. Babaeizadeh
3 papers
Wei Han
5 papers
Pooya Khorrami
1 papers
Jianan Li
1 papers