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arxiv: 1803.01114 · v1 · pith:UUKJDTYTnew · submitted 2018-03-03 · 💻 cs.CV

Focal Loss Dense Detector for Vehicle Surveillance

classification 💻 cs.CV
keywords objectdetectorone-stagetwo-stagedetectiondetectorsvehicleaccuracy
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Deep learning has been widely recognized as a promising approach in different computer vision applications. Specifically, one-stage object detector and two-stage object detector are regarded as the most important two groups of Convolutional Neural Network based object detection methods. One-stage object detector could usually outperform two-stage object detector in speed; However, it normally trails in detection accuracy, compared with two-stage object detectors. In this study, focal loss based RetinaNet, which works as one-stage object detector, is utilized to be able to well match the speed of regular one-stage detectors and also defeat two-stage detectors in accuracy, for vehicle detection. State-of-the-art performance result has been showed on the DETRAC vehicle dataset.

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