3D object detection using improved PointRCNN

Kazuki Fukitani, Ishiyama Shin, Huimin Lu, Shuo Yang, Tohru Kamiya, Yoshihisa Nakatoh, Seiichi Serikawa
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引用次数: 0

Abstract

Recently, two-dimensional object detection (2D object detection) has been introduced in numerous applications such as building exterior diagnosis, crime prevention and surveillance, and medical fields. However, the distance (depth) information is not enough for indoor robot navigation, robot grasping, autonomous running, and so on, with conventional object detection. Therefore, in order to improve the accuracy of 3D object detection, this paper proposes an improvement of Point RCNN, which is a segmentation-based method using RPNs and has performed well in 3D detection benchmarks on the KITTI dataset commonly used in recognition tasks for automatic driving. The proposed improvement is to improve the network in the first stage of generating 3D box candidates in order to solve the problem of frequent false positives. Specifically, we added a Squeeze and Excitation (SE) Block to the network of pointnet++ that performs feature extraction in the first stage and changed the activation function from ReLU to Mish. Experiments were conducted on the KITTI dataset, which is commonly used in research aimed at automated driving, and an accurate comparison was conducted using AP. The proposed method outperforms the conventional method by several percent on all three difficulty levels.

使用改进的PointRCNN进行3D目标检测
近年来,二维物体检测(2D object detection)技术已被广泛应用于建筑外部诊断、犯罪预防与监控、医疗等领域。然而,在传统的目标检测中,距离(深度)信息不足以满足室内机器人的导航、抓取、自主运行等要求。因此,为了提高三维目标检测的精度,本文提出了一种改进的Point RCNN方法,该方法是一种基于RPNs的分割方法,在自动驾驶识别任务中常用的KITTI数据集上进行了良好的三维检测基准测试。本文提出的改进是在生成三维候选框的第一阶段对网络进行改进,以解决误报频繁的问题。具体而言,我们在pointnet++网络中增加了一个挤压和激励(SE)块,该块在第一阶段进行特征提取,并将激活函数从ReLU改为Mish。在自动驾驶研究中常用的KITTI数据集上进行了实验,并使用AP进行了准确的比较。所提出的方法在所有三个难度级别上都比传统方法高出几个百分点。
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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CiteScore
8.40
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