论文标题

我们是否缺少对单眼3D对象检测的伪巨头方法的信心?

Are we Missing Confidence in Pseudo-LiDAR Methods for Monocular 3D Object Detection?

论文作者

Simonelli, Andrea, Bulò, Samuel Rota, Porzi, Lorenzo, Kontschieder, Peter, Ricci, Elisa

论文摘要

基于伪LIDAR的单眼3D对象检测方法,由于Kitti3d基准上表现出的性能增长,特别是在常见报告的验证拆分上,因此在社区中受到了相当大的关注。这对仅使用RGB图像的方法产生了关于伪LIDAR(基于PL)方法的优势的扭曲印象。我们的第一个贡献是通过指出并在实验上表明通过基于PL的方法发布的验证结果的纠正观点是基本的。偏差的来源在Kitti3D对象检测验证集与用于训练深度预测量基于PL PL的方法的训练/验证集之间的重叠。令人惊讶的是,在地理上消除重叠之后,偏见也仍然存在。这使测试集成为唯一可用于比较的可靠集,其中公布的基于PL的方法不出色。我们的第二个贡献将基于PL的方法带入了排名中,这是一种新颖的深度体系结构的设计,该建筑引入了3D置信度预测模块。我们表明,可以成功地集成到我们的框架中,更重要的是,可以通过新设计的3D置信度度量获得改进的性能,从而导致Kitti3D基准测试的最先进的性能,可以获得改进的性能。

Pseudo-LiDAR-based methods for monocular 3D object detection have received considerable attention in the community due to the performance gains exhibited on the KITTI3D benchmark, in particular on the commonly reported validation split. This generated a distorted impression about the superiority of Pseudo-LiDAR-based (PL-based) approaches over methods working with RGB images only. Our first contribution consists in rectifying this view by pointing out and showing experimentally that the validation results published by PL-based methods are substantially biased. The source of the bias resides in an overlap between the KITTI3D object detection validation set and the training/validation sets used to train depth predictors feeding PL-based methods. Surprisingly, the bias remains also after geographically removing the overlap. This leaves the test set as the only reliable set for comparison, where published PL-based methods do not excel. Our second contribution brings PL-based methods back up in the ranking with the design of a novel deep architecture which introduces a 3D confidence prediction module. We show that 3D confidence estimation techniques derived from RGB-only 3D detection approaches can be successfully integrated into our framework and, more importantly, that improved performance can be obtained with a newly designed 3D confidence measure, leading to state-of-the-art performance on the KITTI3D benchmark.

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