Classify 3D voxel based point-cloud using convolutional neural network on a neural compute stick

Xiaofang Xu, Joao Amaro, Sam Caulfield, G. Falcão, D. Moloney
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引用次数: 15

Abstract

With the recent surge in popularity of Convolutional Neural Networks (CNNs), motivated by their significant performance in many classification and related tasks, a new challenge now needs to be addressed: how to accommodate CNNs in mobile devices, such as drones, smartphones, and similar low-power devices? In order to tackle this challenge we exploit the Vision Processing Unit (VPU) that combines dedicated CNN hardware blocks and very high power efficiency. The lack of readily available training data and memory requirements are two of the factors hindering the training and accuracy performance of 3D CNNs. In this paper, we propose a method for generating synthetic 3D point-clouds from realistic CAD scene models (based on the ModelNet10 dataset), in order to enrich the training process for volumetric CNNs. Furthermore, an efficient 3D volumetric object representation (VOLA) is employed. VOLA (Volumetric Accelerator) is a sexaquaternary (power-of-four subdivision) tree-based representation which allows for significant memory saving for volumetric data. Multiple CNN models were trained and the top performing model was ported to the Fathom Neural Compute Stick (NCS). Among the trained CNN models, the maximum test accuracy achieved is 91.3%. After deployment on the Fathom NCS, it takes 11ms (∼ 90 frames per second) to perform inference on each input volume, with a reported power requirement of 1.2W which leads to 75.75 inference per second per Watt.
在神经计算棒上使用卷积神经网络对三维体素点云进行分类
随着卷积神经网络(cnn)在许多分类和相关任务中的显著表现,其最近的普及程度激增,现在需要解决一个新的挑战:如何在移动设备(如无人机、智能手机和类似的低功耗设备)中适应cnn ?为了应对这一挑战,我们开发了视觉处理单元(VPU),它结合了专用的CNN硬件块和非常高的功率效率。缺乏现成的训练数据和内存需求是阻碍3D cnn训练和精度性能的两个因素。在本文中,我们提出了一种从真实CAD场景模型(基于ModelNet10数据集)生成合成三维点云的方法,以丰富体积cnn的训练过程。此外,还采用了一种高效的三维体积对象表示方法(VOLA)。VOLA (Volumetric Accelerator)是一种基于六元(四次幂细分)树的表示法,可以为体积数据节省大量内存。训练多个CNN模型,并将表现最好的模型移植到Fathom Neural Compute Stick (NCS)上。在训练的CNN模型中,达到的最大测试准确率为91.3%。在Fathom NCS上部署后,对每个输入量执行推理需要11ms(每秒90帧),据报道功率要求为1.2W,导致每秒每瓦特进行75.75次推理。
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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