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A iterative learning method for indoor robots visual perception based on multi-feature fusion

机译:基于多特征融合的室内机器人视觉感知迭代学习方法

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For improving the accurate and the real-time requirement of indoor robots in environmental visual perception, a new model of visual perception based on image multi-feature fusion with iterative learning control is proposed. The hierarchical match mode is used to match real-time collected images of indoor robot with various multi-directional and multi-state images in a database. After establishing a database of 1000 images, average accuracy, average recall ratio and average time are used to evaluate the algorithm. Experimental results show that the algorithm can accurately and efficiently apperceive target images. Relative to single feature visual perception, the algorithm can not only achieve higher matching accuracy, but also meet the real-time requirement of robots.
机译:为了提高室内机器人对环境视觉感知的准确性和实时性,提出了一种基于图像多特征融合与迭代学习控制的视觉感知新模型。分层匹配模式用于将室内机器人的实时采集图像与数据库中的各种多方向和多状态图像进行匹配。建立了包含1000张图像的数据库后,将使用平均准确度,平均查全率和平均时间来评估该算法。实验结果表明,该算法能够准确,高效地感知目标图像。相对于单特征视觉,该算法不仅可以达到较高的匹配精度,还可以满足机器人的实时性要求。

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