半监督三维物体检测的侧面感知质量估计

IF 18.6
Wenfei Yang;Chuxin Wang;Tianzhu Zhang;Yongdong Zhang;Feng Wu
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引用次数: 0

摘要

基于点云的半监督三维目标检测旨在训练具有少量标记数据和大量未标记数据的检测器。在现有的方法中,基于伪标签的方法取得了较好的效果,其核心在于如何根据设计的质量评价标准选择高质量的伪标签。尽管这些方法都取得了成功,但它们都是从全局的角度来考虑定位和分类质量的估计。对于本地化质量,他们使用全局分数阈值过滤掉低质量的伪标签,并在训练过程中给予每一方同等的重要性,忽略了本地化质量不同的一方不应该被平等对待的事实。此外,由于全局阈值较高,大量伪标签被丢弃,其中也可能包含一些正确预测的方面,有助于模型训练。对于分类质量,他们通常结合客观性评分和分类置信度评分来过滤伪标签。它们主要关注的是设计有效的分类置信度评价指标,而忽略了预测更好的客观得分的重要性。本文提出了一种用于半监督目标检测的侧面感知质量估计方法sa3de++,该方法由一个概率侧面定位策略、一个侧面感知质量估计策略和一个软伪标签选择策略组成。广泛的实验结果表明,该方法在不同的场景和评价标准下均优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SA3Det++: Side-Aware Quality Estimation for Semi-Supervised 3D Object Detection
Semi-supervised 3D object detection from point cloud aims to train a detector with a small number of labeled data and a large number of unlabeled data. Among existing methods, the pseudo-label based methods have achieved superior performance, and the core lies in how to select high-quality pseudo-labels with the designed quality evaluation criterion. Despite the success of these methods, they all consider the localization and classification quality estimation from a global perspective. For localization quality, they use a global score threshold to filter out low-quality pseudo-labels and assign equal importance to each side during training, ignoring the fact that sides with different localization quality should not be treat equally. Besides, a large number of pseudo-labels are discarded due to the high global threshold, which may also contain some correctly predicted sides that are helpful for model training. For the classification quality, they usually combine the objectness score and classification confidence score to filter out pseudo-labels. The main focus of them is designing effective classification confidence evaluation metrics, neglecting the importance of predicting better objectness score. In this paper, we propose SA3Det++, a side-aware quality estimation method for semi-supervised object detection, which consists of a probabilistic side localization strategy, a side-aware quality estimation strategy, and a soft pseudo-label selection strategy. Extensive results demonstrate that the proposed method consistently outperforms the baseline methods under different scenes and evaluation criterions.
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