articleJun 1, 2019Closed access

Bounding Box Regression With Uncertainty for Accurate Object Detection

Carnegie Mellon University · Megvii (China)

Indexed incrossref

Abstract

Large-scale object detection datasets (e.g., MS-COCO) try to define the ground truth bounding boxes as clear as possible. However, we observe that ambiguities are still introduced when labeling the bounding boxes. In this paper, we propose a novel bounding box regression loss for learning bounding box transformation and localization variance together. Our loss greatly improves the localization accuracies of various architectures with nearly no additional computation. The learned localization variance allows us to merge neighboring bounding boxes during non-maximum suppression (NMS), which further improves the localization performance. On MS-COCO, we boost the Average Precision (AP) of VGG-16 Faster R-CNN from…

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588
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35.01
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Authors

5

Topics & keywords

Keywords
  • Minimum bounding box
  • Bounding overwatch
  • Computer science
  • Computation
  • Ground truth
  • Object detection
  • Merge (version control)
  • Variance (accounting)
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