图像压缩方面利用神经网络进行机器人视觉伺服控制

V. Nicolau, G. Petrea, M. Andrei
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引用次数: 2

摘要

人工智能在图像处理中有着广泛的应用。神经网络(NN)由于其泛化和从实例中学习的能力而成功地用于解决复杂问题。本文讨论了利用人工神经网络进行图像压缩的几个方面。该网络用于视觉伺服系统的反馈回路中,目的是控制配备机器人机械手的轮式移动机器人。因此,使用灰度图像。目标是寻找一种低复杂度的前馈神经网络(FFNN)图像压缩模型,该模型具有良好的压缩率,并且原始图像与重建图像之间的误差较小。利用图像的不变矩对模型进行验证。在不同的数据集和训练条件下,分析了不同的FFNN结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspects of image compression using neural networks for visual servoing in robot control
Artificial intelligence is widely used in image processing. Neural networks (NN) were successful used for solving complicated issues due to their capacity of generalization and learning from examples. In this paper some aspects of image compression using artificial neural networks are discussed. The network is used in the feedback loop of the visual servoing system, which aims to control a wheeled mobile robot equipped with a robotic manipulator. Hence, grayscale images are used. The goal is to find a low-complexity feed-forward neural network (FFNN) model for image compression, with good compression rate, but with small errors between original image and the reconstructed one. The model is validated using the invariant moments of the image. Different FFNN architectures, with different data sets and training conditions, are analyzed.
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