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首页> 外文期刊>International Journal of Artificial Intelligence & Applications (IJAIA) >Capsule Network Performance with Autonomous Navigation
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Capsule Network Performance with Autonomous Navigation

机译:具有自主导航的胶囊网络性能

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Capsule Networks (CapsNets) have been proposed as an alternative to Convolutional Neural Networks (CNNs). This paper showcases how CapsNets are more capable than CNNs for autonomous agent exploration of realistic scenarios. In real world navigation, rewards external to agents may be rare. In turn, reinforcement learning algorithms can struggle to form meaningful policy functions. This papera??s approach Capsules Exploration Module (Caps-EM) pairs a CapsNets architecture with an Advantage Actor Critic algorithm. Other approaches for navigating sparse environments require intrinsic reward generators, such as the Intrinsic Curiosity Module (ICM) and Augmented Curiosity Modules (ACM). CapsEM uses a more compact architecture without need for intrinsic rewards. Tested using ViZDoom, the CapsEM uses 44% and 83% fewer trainable network parameters than the ICM and Depth-Augmented Curiosity Module (D-ACM), respectively, for 1141% and 437% average time improvement over the ICM and DACM, respectively, for converging to a policy function across "My Way Home" scenarios.
机译:已经提出了胶囊网络(Capsnets)作为卷积神经网络(CNNS)的替代方案。本文展示了Capsnets如何对自主方式的自主代理商探索的CNNS更有能力。在现实世界导航中,代理商外部的奖励可能是罕见的。反过来,加强学习算法可以努力形成有意义的政策功能。本文的方法胶囊探索模块(CAPS-EM)对具有优势演员批评算法的Capsnets架构。导航稀疏环境的其他方法需要内在的奖励发生器,例如固有的好奇心模块(ICM)和增强的好奇心模块(ACM)。 CAPSEM使用更紧凑的架构,无需内在奖励。使用VizDoom测试,CAPSEM分别使用44%和83%的可训练网络参数,分别比ICM和深度增强的好奇心模块(D-ACM)分别超过ICM和DACM的11​​41%和437%的平均时间改进,在“我的方式回家”方案上会聚到策略函数。

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