CVOct 5, 2018

Decoupled Classification Refinement: Hard False Positive Suppression for Object Detection

arXiv:1810.04002v249 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses performance issues in object detection for computer vision applications, but it is incremental as it builds on existing detector frameworks.

The paper tackles the problem of hard false positives in object detection by proposing a Decoupled Classification Refinement (DCR) network, which achieves competitive results on PASCAL VOC and COCO datasets.

In this paper, we analyze failure cases of state-of-the-art detectors and observe that most hard false positives result from classification instead of localization and they have a large negative impact on the performance of object detectors. We conjecture there are three factors: (1) Shared feature representation is not optimal due to the mismatched goals of feature learning for classification and localization; (2) multi-task learning helps, yet optimization of the multi-task loss may result in sub-optimal for individual tasks; (3) large receptive field for different scales leads to redundant context information for small objects. We demonstrate the potential of detector classification power by a simple, effective, and widely-applicable Decoupled Classification Refinement (DCR) network. In particular, DCR places a separate classification network in parallel with the localization network (base detector). With ROI Pooling placed on the early stage of the classification network, we enforce an adaptive receptive field in DCR. During training, DCR samples hard false positives from the base detector and trains a strong classifier to refine classification results. During testing, DCR refines all boxes from the base detector. Experiments show competitive results on PASCAL VOC and COCO without any bells and whistles. Our codes are available at: https://github.com/bowenc0221/Decoupled-Classification-Refinement.

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