3D Point-cloud Segmentation System Based on AI Model

Kuan-Yu Liao, Min-Hua Lu, Yunqi Fan
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引用次数: 0

Abstract

With the rapid development of technology, big data, Internet of Things, and deep learning technologies are gradually developing, among which the development of 2-D image recognition in deep learning is becoming more and more mature. For these reasons, the image recognition of 3D point-cloud is still under development. We combine projection and point-cloud algorithms for large scale semantic segmentation of 3D point-cloud images, and then combine the new neural network based on "Local Flattening for Point Convolution" and "Random Sampling Network" to lighten the model by using depth-separable convolution and quantization. Finally, we implement the convolutional layers in the neural network based on a digital integrated circuit design flow based on a standard cell library.
基于AI模型的三维点云分割系统
随着科技的飞速发展,大数据、物联网、深度学习等技术逐步发展,其中深度学习中二维图像识别的发展也越来越成熟。由于这些原因,三维点云的图像识别仍处于发展阶段。结合投影算法和点云算法对三维点云图像进行大规模语义分割,然后结合基于“点卷积局部平坦化”和“随机抽样网络”的神经网络,通过深度可分卷积和量化来减轻模型。最后,我们基于一个基于标准单元库的数字集成电路设计流程实现了神经网络中的卷积层。
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