Identification and Recognition of Objects in Color Stereo Images Using a Hierachial SOM

G. Bertolini, S. Ramat
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引用次数: 3

Abstract

Identification and recognition of objects in digital images is a fundamental task in robotic vision. Here we propose an approach based on clustering of feature extracted from HSV color space and depth, using a hierarchical self organizing map (HSOM). Binocular images are first preprocessed using a watershed algorithm; adjacent regions are then merged based on HSV similarities. For each region we compute a six element features vector: median depth (computed as disparity), median H, S, V values, and the X and Y coordinates of its centroid. These are the input to the HSOM network which is allowed to learn on the first image of a sequence. The trained network is then used to segment other images of the same scene. If, on the new image, the same neuron responds to regions that belong to the same object, the object is considered as recognized. The technique achieves good results, recognizing up to 82% of the objects.
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基于层次SOM的彩色立体图像中物体的识别
数字图像中物体的识别是机器人视觉的一项基本任务。本文提出了一种基于HSV颜色空间和深度提取特征聚类的方法,使用层次自组织映射(HSOM)。首先使用分水岭算法对双目图像进行预处理;然后根据HSV相似度合并相邻区域。对于每个区域,我们计算六个元素特征向量:中位数深度(以视差计算),中位数H, S, V值以及其质心的X和Y坐标。这些是HSOM网络的输入,它可以在序列的第一张图像上学习。然后使用训练好的网络来分割同一场景的其他图像。如果在新图像上,相同的神经元对属于同一物体的区域做出反应,则认为该物体已被识别。该技术取得了良好的效果,识别了高达82%的物体。
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