Weakly Supervised Region-Level Contrastive Learning for Efficient Object Detection

Yuang Deng, Yuhang Zhang, Wenrui Dai, Xiaopeng Zhang, H. Xiong
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Abstract

Semi-supervised learning, which assigns pseudo labels with models trained using limited labeled data, has been widely used in object detection to reduce the labeling cost. However, the provided pseudo annotations inevitably suffer noise since the initial model is not perfect. To address this issue, this paper introduces contrastive learning into semi-supervised object detection, and we claim that contrastive loss, which inherently relies on data augmentations, is much more robust than traditional softmax regression for noisy labels. To take full advantage of it in the detection task, we incorporate labels prior to contrastive loss and leverage plenty of region proposals to enhance diversity, which is crucial for contrastive learning. In this way, the model is optimized to make the region-level features with the same class be translation and scale invariant. Furthermore, we redesign the negative memory bank in contrastive learning to make the training more efficient. As far as we know, we are the first attempt that introduces contrastive learning in semi-supervised object detection. Experimental results on detection benchmarks demonstrate the superiority of our method. Notably, our method achieves 79.9% accuracy on VOC, which is 6.2% better than the supervised baseline and 0.7% improvement compared with the state-of-the-art method.
有效目标检测的弱监督区域级对比学习
半监督学习是一种利用有限的标记数据训练模型来分配伪标签的方法,已广泛应用于目标检测中,以降低标记成本。然而,由于初始模型并不完美,所提供的伪注释不可避免地会受到干扰。为了解决这个问题,本文将对比学习引入到半监督对象检测中,并且我们声称固有地依赖于数据增强的对比损失比传统的带有噪声标签的softmax回归更健壮。为了在检测任务中充分利用它,我们在对比损失之前加入了标签,并利用大量的区域建议来增强多样性,这对对比学习至关重要。这样,对模型进行了优化,使具有相同类别的区域级特征具有平移性和尺度不变性。此外,我们重新设计了对比学习中的负记忆库,以提高训练效率。据我们所知,我们是第一个在半监督对象检测中引入对比学习的尝试。在检测基准上的实验结果证明了该方法的优越性。值得注意的是,我们的方法在VOC上达到了79.9%的准确率,比监督基线提高了6.2%,比最先进的方法提高了0.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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