CVAug 17, 2021

Exploring Classification Equilibrium in Long-Tailed Object Detection

arXiv:2108.07507v2114 citationsHas Code
Originality Incremental advance
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This addresses the problem of long-tailed object detection for computer vision applications, offering incremental improvements over existing methods.

The paper tackles performance drop in object detection due to imbalanced training data by proposing an Equilibrium Loss and Memory-augmented Feature Sampling method, which improve tail class detection by 15.6 AP on LVIS while maintaining head class performance.

The conventional detectors tend to make imbalanced classification and suffer performance drop, when the distribution of the training data is severely skewed. In this paper, we propose to use the mean classification score to indicate the classification accuracy for each category during training. Based on this indicator, we balance the classification via an Equilibrium Loss (EBL) and a Memory-augmented Feature Sampling (MFS) method. Specifically, EBL increases the intensity of the adjustment of the decision boundary for the weak classes by a designed score-guided loss margin between any two classes. On the other hand, MFS improves the frequency and accuracy of the adjustment of the decision boundary for the weak classes through over-sampling the instance features of those classes. Therefore, EBL and MFS work collaboratively for finding the classification equilibrium in long-tailed detection, and dramatically improve the performance of tail classes while maintaining or even improving the performance of head classes. We conduct experiments on LVIS using Mask R-CNN with various backbones including ResNet-50-FPN and ResNet-101-FPN to show the superiority of the proposed method. It improves the detection performance of tail classes by 15.6 AP, and outperforms the most recent long-tailed object detectors by more than 1 AP. Code is available at https://github.com/fcjian/LOCE.

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