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Study of robot landmark recognition with complex background

机译:复杂背景下的机器人地标识别研究

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摘要

It's of great importance for assisting robot in path planning, position navigating and task performing by perceiving and recognising environment characteristic. To solve the problem of monocular-vision-oriented landmark recognition for mobile intelligent robot marching with complex background, a kind of nested region growing algorithm which fused with transcendental color information and based on current maximum convergence center is proposed, allowing invariance localization to changes in position, scale, rotation, jitters and weather conditions. Firstly, a novel experiment threshold based on RGB vision model is used for the first image segmentation, which allowing some objects and partial scenes with similar color to landmarks also are detected with landmarks together. Secondly, with current maximum convergence center on segmented image as each growing seed point, the above region growing algorithm accordingly starts to establish several Regions of Interest (ROI) orderly. According to shape characteristics, a quick and effectual contour analysis based on primitive element is applied in deciding whether current ROI could be reserved or deleted after each region growing, then each ROI is judged initially and positioned. When the position information as feedback is conveyed to the gray image, the whole landmarks are extracted accurately with the second segmentation on the local image that exclusive to landmark area. Finally, landmarks are recognised by Hopfield neural network. Results issued from experiments on a great number of images with both campus and urban district as background show the effectiveness of the proposed algorithm.
机译:通过感知和识别环境特征,对协助机器人进行路径规划,位置导航和任务执行至关重要。为解决复杂背景下移动智能机器人单视视觉地标识别问题,提出了一种融合了超越颜色信息的嵌套区域增长算法,该算法基于当前最大会聚中心,允许不变性变化。位置,比例,旋转,抖动和天气状况。首先,将基于RGB视觉模型的新颖实验阈值用于第一图像分割,该阈值允许将一些与地标颜色相似的对象和部分场景与地标一起检测。其次,以当前在分割图像上的最大收敛中心为每个生长种子点,上述区域生长算法相应地开始有序地建立多个感兴趣区域(ROI)。根据形状特征,基于原始元素进行快速有效的轮廓分析,以确定每个区域生长后是否可以保留或删除当前的ROI,然后对每个ROI进行初始判断和定位。当作为反馈的位置信息被传送到灰度图像时,整个地标将通过对地标区域专有的局部图像进行第二次分割而准确地提取出来。最后,Hopfield神经网络可以识别地标。在以校园和市区为背景的大量图像上进行的实验结果表明,该算法是有效的。

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