论文标题

与任务相关的表示网络机器人感知的学习

Task-relevant Representation Learning for Networked Robotic Perception

论文作者

Nakanoya, Manabu, Chinchali, Sandeep, Anemogiannis, Alexandros, Datta, Akul, Katti, Sachin, Pavone, Marco

论文摘要

如今,即使是最多的限制机器人也可以测量复杂的高数据速率视频和LiDAR感觉流。通常,从低功率无人机到空间和地下流浪者的机器人,如果不确定或无法在本地运行复杂的感知或映射任务,则需要将高焦酸感官数据传输到远程计算服务器。但是,当今的感官数据表示形式主要是为人类而不是机器人感知而设计的,因此经常浪费宝贵的计算或无线网络资源,以传递场景中不重要的部分,而这些部分对于高级机器人任务是不需要的。本文提出了一种算法,以了解与预训练的机器人感知模型共同设计的感官数据的任务相关表示。我们的算法比竞争方法高达11倍,积极地压缩机器人感觉数据。此外,它对不同的任务进行了高度准确性和强大的概括性,包括使用低功率深度学习加速器,神经运动计划和环境时间表的分类,包括火星地形分类。

Today, even the most compute-and-power constrained robots can measure complex, high data-rate video and LIDAR sensory streams. Often, such robots, ranging from low-power drones to space and subterranean rovers, need to transmit high-bitrate sensory data to a remote compute server if they are uncertain or cannot scalably run complex perception or mapping tasks locally. However, today's representations for sensory data are mostly designed for human, not robotic, perception and thus often waste precious compute or wireless network resources to transmit unimportant parts of a scene that are unnecessary for a high-level robotic task. This paper presents an algorithm to learn task-relevant representations of sensory data that are co-designed with a pre-trained robotic perception model's ultimate objective. Our algorithm aggressively compresses robotic sensory data by up to 11x more than competing methods. Further, it achieves high accuracy and robust generalization on diverse tasks including Mars terrain classification with low-power deep learning accelerators, neural motion planning, and environmental timeseries classification.

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