Semi-supervised object detection has recently achieved substantial progress. As a mainstream solution, the self-labeling-based methods train the detector on both labeled data and unlabeled data with pseudo labels predicted by the detector itself, but their performances are always limited. Through experimental analysis, we reveal the underlying reason is that the detector is misguided by the incorrect pseudo labels predicted by itself (dubbed self-errors). These self-errors can hurt performance even worse than random-errors, and can be neither discerned nor rectified during the self-labeling process. In this paper, we propose an effective detection framework named CrossRectify, to obtain accurate pseudo labels by simultaneously training two detectors with different initial parameters. Specifically, the proposed approach leverages the disagreements between detectors to discern the self-errors and refines the pseudo label quality by the proposed cross-rectifying mechanism. Extensive experiments show that CrossRectify achieves outperforming performances over various detector structures on 2D and 3D detection benchmarks.
翻译:半监督天体探测最近取得了显著进展。 作为主流解决方案,以自我标签为基础的方法在标签数据和无标签数据上用探测器本身预测的假标签对探测器进行培训,但其性能总是有限。通过实验分析,我们发现根本原因是探测器被自己预测的不正确的假标签(dubbbed自动器)误导。这些自我探测器的性能甚至比随机机器人更差,在自我标签过程中无法辨别或纠正。在本文中,我们提议一个名为交叉验证的有效探测框架,通过同时培训两个具有不同初始参数的探测器获得准确的假标签。具体地说,拟议方法利用探测器之间的分歧来辨别自动传感器,并通过拟议的交叉校准机制改进假标签质量。广泛的实验显示,交叉验证在2D和3D检测基准的各种探测器结构上取得优于业绩的优异性。