3D Object Detection from Point Cloud Based on Deep Learning

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Abstract

In order to study the modern 3D object detection algorithm based on deep learning, this paper studies the point-based 3D object detection algorithm, that is, a 3D object detection algorithm that uses multilayer perceptron to extract point features. This paper proposes a method based on point RCNN. A three-stage 3D object detection algorithm improves the accuracy of the algorithm by fusing image information. The algorithm in this paper integrates the information and image information of the three stages well, which improves the information utilization of the whole algorithm. Compared with the traditional 3D target detection algorithm, the structure of the algorithm in this paper is more compact, which effectively improves the utilization of information.

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CITATION STYLE

APA

Hao, N. (2022). 3D Object Detection from Point Cloud Based on Deep Learning. Wireless Communications and Mobile Computing, 2022. https://doi.org/10.1155/2022/6228797

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