移动平台上具有密集RGB-D数据采集的低功耗实时三维目标识别处理器

Dongseok Im, Gwangtae Park, Junha Ryu, Zhiyong Li, Sanghoon Kang, Donghyeon Han, Jinsu Lee, Wonhoon Park, Hankyul Kwon, H. Yoo
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引用次数: 0

摘要

提出了一种基于RGBD数据采集的低功耗实时三维目标识别系统。该系统通过单目深度估计合成密集的RGB-D数据,将传感器采集三维数据的功耗降低×27.3。此外,该处理器还降低了基于点云的神经网络(PNN)的能量消耗,该神经网络利用位片级计算和基于流水线结构的点特征重用方法。此外,该处理器通过统一的点处理核心支持PNN的点采样和分组算法。最后,处理器达到210.0 mW,同时实现每秒34.0帧(fps)的端到端RGB-D采集和3D物体识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Low-power and Real-time 3D Object Recognition Processor with Dense RGB-D Data Acquisition in Mobile Platforms
A low-power and real-time 3D object recognition with RGBD data acquisition system-on-chip (SoC) is proposed. By synthesizing dense RGB-D data through monocular depth estimation, the proposed system reduces the sensor power for 3D data acquisition by ×27.3 lower. Moreover, the proposed processor reduces the energy consumption of a point cloud based neural network (PNN) exploiting bit-slice-level computation and a point feature reuse method with a pipelined architecture. Additionally, the processor supports the point sampling and grouping algorithms of the PNN with a unified point processing core. Finally, the processor achieves 210.0 mW while implementing 34.0 frame-per-second (fps) end-to-end RGB-D acquisition and 3D object recognition.
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