基于自适应动作预测的高效多视图目标检测

Qianli Xu, Fen Fang, Nicolas Gauthier, Wenyu Liang, Yan Wu, Liyuan Li, J. Lim
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引用次数: 5

摘要

主动视觉是机器人理想的感知特征。现有的方法通常对任务和环境做了很强的假设,因此鲁棒性和效率较低。为了提高目标检测的效率和鲁棒性,提出了一种自适应视图规划方法。我们将多目标检测任务表述为给定目标初始位置的主动多视图目标检测问题。接下来,我们提出了一种基于决斗结构的深度q学习网络的自适应动作预测(A2P)方法。A2P方法能够基于多个目标的视觉信息进行视图规划;并根据任务状态调整动作范围。在AVD数据集上评估,A2P在陌生环境下的检测精度提高了21.9%,效率提高了22.7%。在T-LESS数据集上,多目标检测在达到同等检测精度的同时,效率提高了30%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Efficient Multiview Object Detection with Adaptive Action Prediction
Active vision is a desirable perceptual feature for robots. Existing approaches usually make strong assumptions about the task and environment, thus are less robust and efficient. This study proposes an adaptive view planning approach to boost the efficiency and robustness of active object detection. We formulate the multi-object detection task as an active multiview object detection problem given the initial location of the objects. Next, we propose a novel adaptive action prediction (A2P) method built on a deep Q-learning network with a dueling architecture. The A2P method is able to perform view planning based on visual information of multiple objects; and adjust action ranges according to the task status. Evaluated on the AVD dataset, A2P leads to 21.9% increase in detection accuracy in unfamiliar environments, while improving efficiency by 22.7%. On the T-LESS dataset, multi-object detection boosts efficiency by more than 30% while achieving equivalent detection accuracy.
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