Visual learning with cellular neural networks

A. Badalov, X. Vilasís-Cardona, J. Albó-Canals
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引用次数: 1

Abstract

Reinforcement learning is a powerful tool for teaching robotic agents to perform tasks in real environments. Visual information provided by a camera could be a cheap and rich source of information about an agent's surroundings, if this information were represented in a compact and generalizable form. We turn to cellular neural networks as the means of transforming visual input to a representation suitable for reinforcement learning. We investigate a CNN-based image processing algorithm and describe a method for efficiently computing CNNs using the DirectX 10 API.
细胞神经网络的视觉学习
强化学习是教导机器人代理在真实环境中执行任务的强大工具。摄像机提供的视觉信息可能是一个廉价而丰富的信息来源,如果这些信息以紧凑和可推广的形式表示的话。我们转向细胞神经网络作为将视觉输入转换为适合强化学习的表示的手段。我们研究了一种基于cnn的图像处理算法,并描述了一种使用DirectX 10 API高效计算cnn的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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