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Combination of Recurrent Neural Network and Deep Learning for Robot Navigation Task in Off-Road Environment

机译:越野中经常性神经网络的结合与机器人导航任务在越野环境中的结合

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摘要

This paper tackles the challenge of the necessity of using the sequence of past environment states as the controller's inputs in a vision-based robot navigation task. In this task, a robot has to follow a given trajectory without falling in pits and missing its balance in uneven terrain, when the only sensory input is the raw image captured by a camera. The robot should distinguish big pits from small holes to decide between avoiding and passing over. In non-Markov processes such as the abovementioned task, the decision is done using past sensory data to ensure admissible performance. Applying images as sensory inputs naturally causes the curse of dimensionality difficulty. On the other hand, using sequences of past images intensifies this difficulty. In this paper, a new framework called recurrent deep learning (RDL) with combination of deep learning (DL) and recurrent neural network is proposed to cope with the above challenge. At first, the proper features are extracted from the raw image using DL. Then, these represented features plus some expert-defined features are used as the inputs of a fully connected recurrent network (as target network) to generate command control of the robot. To evaluate the proposed RDL framework, some experiments are established on WEBOTS and MATLAB co-simulation platform. The simulation results demonstrate the proposed framework outperforms the conventional controller based on DL for the navigation task in the uneven terrains.
机译:本文应对使用过去环境序列状态的必要性作为控制器的基于视觉的机器人导航任务中的输入的必要性。在此任务中,机器人必须遵循给定的轨迹,而不会落入凹坑,并且当唯一的感觉输入是由相机捕获的原始图像时,在不均匀的地形中缺失其平衡。机器人应该将大坑区分小孔来决定避免和通过。在非马尔可夫的过程(如上述任务)中,使用过去的感官数据完成决定以确保可接受的性能。将图像作为感觉输入应用自然导致维度难度的诅咒。另一方面,使用过去图像的序列加剧了这种困难。在本文中,提出了一种称为反复性深度学习(RDL)的新框架,与深度学习(DL)和经常性神经网络的结合,以应对上述挑战。首先,使用DL从原始图像中提取适当的特征。然后,这些代表的功能加上一些专家定义的功能用作完全连接的经常性网络(作为目标网络)的输入,以生成机器人的命令控制。为了评估所提出的RDL框架,在博标和MATLAB共模平台上建立了一些实验。仿真结果证明了所提出的框架优于基于不均匀地形中的导航任务的DL的传统控制器。

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