基于多头自关注的点云分类方法及应用

Xue-Jun Liu Xue-Jun Liu, Wen-Hui Wang Xue-Jun Liu, Yong Yan Wen-Hui Wang, Zhong-Ji Cui Yong Yan, Yun Sha Zhong-Ji Cui, Yi-Nan Jiang Yun Sha
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引用次数: 0

摘要

在对深相机点云进行三维重建的危险化学品仓库安全状态监测中,存在着点云在货物图像中空间大、分布稀疏、低维分布相似等分类难点。针对上述问题,提出了一种基于多头注意机制的点云识别方法。该算法首先通过仿射变换算法对点云数据集的分布进行归一化处理,解决稀疏分布问题。然后,通过融合数据下采样和曲线特征聚合算法得到高维特征映射,解决低维分布逼近问题;然后使用多头自注意编码器对特征图进行编码,获得不同头部下的特征,并将其合并成特征图。最后,利用多层全连接神经网络作为解码器,将特征映射解码为最终的目标分类。在ModelNet40数据集和自建仓库货物数据集上进行对比实验,结果表明,与其他分类算法相比,本文的分类准确率提高了0.5% ~ 7.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Point Cloud Classification Method and Its Applications Based on Multi-Head Self-Attention
In the monitoring the safety status of hazardous chemical warehouses by three-dimensional re-construction of deep camera point clouds, there are classification difficulties such as large space, sparse distribution of point clouds in cargo images, and similar distribution in low dimensions. Based on the above problem, a point cloud recognition method based on multi-head attention mechanism is proposed. The algorithm first normalizes the distribution of the point cloud data set through the affine transformation algorithm to solve the problem of sparse distribution. Then, the high-dimensional feature map is obtained by fusing the data down-sampling and curve feature aggregation algorithms to solve the problem of low-dimensional distribution approximation. The feature map is then encoded using a multi-head self-attention encoder to obtain features under different heads, which are then merged into a feature map. Finally, a multi-layer fully connected neural network is used as the decoder to decode the feature map into the final object classification. Comparative experiments were performed on the ModelNet40 dataset and the self-built dataset of warehouse goods, and the results showed that the accuracy of this paper was improved by 0.5% to 7.8% compared with that of other classification algorithms.  
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