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Object Detection in Videos by High Quality Object Linking

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arxiv 1801.09823 v3 pith:FB7TTDHD submitted 2018-01-30 cs.CV

Object Detection in Videos by High Quality Object Linking

classification cs.CV
keywords objectshorttubeletsdetectionlinkingimageobjectsstatic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Compared with object detection in static images, object detection in videos is more challenging due to degraded image qualities. An effective way to address this problem is to exploit temporal contexts by linking the same object across video to form tubelets and aggregating classification scores in the tubelets. In this paper, we focus on obtaining high quality object linking results for better classification. Unlike previous methods that link objects by checking boxes between neighboring frames, we propose to link in the same frame. To achieve this goal, we extend prior methods in following aspects: (1) a cuboid proposal network that extracts spatio-temporal candidate cuboids which bound the movement of objects; (2) a short tubelet detection network that detects short tubelets in short video segments; (3) a short tubelet linking algorithm that links temporally-overlapping short tubelets to form long tubelets. Experiments on the ImageNet VID dataset show that our method outperforms both the static image detector and the previous state of the art. In particular, our method improves results by 8.8% over the static image detector for fast moving objects.

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Cited by 1 Pith paper

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  1. Object Detection in Video with Spatial-temporal Context Aggregation

    cs.CV 2019-07 unverdicted novelty 6.0

    Proposal-level spatio-temporal context aggregation for video object detection achieves 80.3% mAP on ImageNet VID, improving Faster R-CNN baseline by 5.8%.