半监督3D物体检测中的噪声寻址

Farzad Nozarian, Shashank Agarwal, Farzaneh Rezaeianaran, Danish Shahzad, Atanas Poibrenski, Christian Müller, P. Slusallek
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引用次数: 0

摘要

当标记数据有限时,半监督三维目标检测可以从伪标记技术中获益。然而,最近的方法在训练过程中忽略了噪声伪标签的影响,尽管通过基于置信度的过滤来提高伪标签的质量。在本文中,我们研究了噪声伪标签对基于ou的目标分配的影响,并提出了可靠学生框架,该框架结合了两种互补的方法来减轻误差。首先,它涉及到一个班级感知的目标分配策略,减少了困难班级的假负分配。其次,它包括一个可靠性加权策略,该策略可以抑制假阳性分配错误,同时也可以从第一步开始解决剩余的假阴性。通过查询教师网络中学生建议的置信度分数来确定信度权重。我们的工作超越了以前在半监督设置下对点云的KITTI 3D目标检测基准的最先进技术。在1%的标记数据上,尽管只有37个标记样本可用,但我们的方法对行人类实现了6.2%的AP改进。在2%的设置下,改善变得显著,行人和骑自行车的人的AP分别提高了6.0%和5.7%。我们的代码将在https://github.com/fnozarian/ReliableStudent上发布
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable Student: Addressing Noise in Semi-Supervised 3D Object Detection
Semi-supervised 3D object detection can benefit from the promising pseudo-labeling technique when labeled data is limited. However, recent approaches have overlooked the impact of noisy pseudo-labels during training, despite efforts to enhance pseudo-label quality through confidence-based filtering. In this paper, we examine the impact of noisy pseudo-labels on IoU-based target assignment and propose the Reliable Student framework, which incorporates two complementary approaches to mitigate errors. First, it involves a class-aware target assignment strategy that reduces false negative assignments in difficult classes. Second, it includes a reliability weighting strategy that suppresses false positive assignment errors while also addressing remaining false negatives from the first step. The reliability weights are determined by querying the teacher network for confidence scores of the student-generated proposals. Our work surpasses the previous state-of-the-art on KITTI 3D object detection benchmark on point clouds in the semi-supervised setting. On 1% labeled data, our approach achieves a 6.2% AP improvement for the pedestrian class, despite having only 37 labeled samples available. The improvements become significant for the 2% setting, achieving 6.0% AP and 5.7% AP improvements for the pedestrian and cyclist classes, respectively. Our code will be released at https://github.com/fnozarian/ReliableStudent
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