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Deep Reinforcement Learning Methods for Navigational Aids

机译:深度加固学习方法,用于导航艾滋病

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Navigation is one of the most complex daily activities we engage in. Partly due to its complexity, navigational abilities are vulnerable to many conditions including Topographical Agnosia, Alzheimer's Disease, and vision impairments. While navigation using solely vision remains a difficult problem in the field of assistive technology, emerging methods in Deep Reinforcement Learning and Computer Vision show promise in producing vision-based navigational aids for those with navigation impairments. To this effect, we introduce GraphMem, a Neural Computing approach to navigation tasks and compare it to several state of the art Neural Computing methods in a one-shot, 3D, first-person maze solving task. Comparing GraphMem to current methods in navigation tasks unveils insights into navigation and represents a first step towards employing these emerging techniques in navigational assistive technology.
机译:导航是我们参与的最复杂的日常活动之一。部分由于其复杂性,导航能力易于许多条件,包括地形毒性,阿尔茨海默病和视力障碍。虽然使用完全愿景的导航仍然是辅助技术领域的难题,但深度加强学习和计算机视觉中的新兴方法在为导航障碍产生了基于视觉的导航辅助工具的承诺。为此,我们介绍了GraphMem,是导航任务的神经计算方法,并将其与一拍,3D,第一人称迷宫解决任务中的艺术神经计算方法的几个状态进行比较。将GraphMEM与导航任务中的当前方法进行比较,揭示进入导航的见解,代表采用导航辅助技术中这些新兴技术的第一步。

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