从物体角点提取形状特征

K. K. Rao, R. Krishnan
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引用次数: 7

摘要

提出了一种基于角点的形状特征提取方法。角包含了大部分形状信息。在计算机视觉和自动目标识别系统中,不受缩放、旋转和平移影响的形状特征提取是一个重要问题。Canny(1986)边缘检测器能够产生单像素宽边缘,用于从图像中获得轮廓。使用这个闭合轮廓作为输入,计算每个点的拱高函数。局部最大值对应于形状中的角点。计算了一组在旋转、平移和尺度变化下不变的有效一维矩。这些是相应的形状特征。通过将提取的特征与形状特征库进行比较来实现分类。为了验证这一概念,进行了以下实验。10架不同的飞机和10架相似的飞机作为输入。在两个数据集中,基于轮廓的矩比几何矩表现得更好。两个非常相似的飞机的旋转不变性表明,基于轮廓的矩表现更好。所描述的程序为提取形状特征提供了一种优雅的方法。这些特征也可以用作神经网络训练和识别形状的输入。
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Shape feature extraction from object corners
A method to extract shape features based on corners is described. Corners contain most of the shape information. Extraction of shape features which are invariant to scaling, rotation and translation is an important problem in computer vision and automatic target recognition systems. A Canny (1986) edge detector which is capable of producing single pixel wide edges is used for obtaining the contour from an image. Using this closed contour as input, the arch height function is computed at each point. The local maxima's correspond to the corner points in the shape. A set of efficient one dimensional moments which are invariant under rotation, translation and scale change is computed. These are the corresponding shape features. Classification is achieved by comparing the extracted features with the shape feature library. In order to validate the concept the following experiments were performed. Ten dissimilar aircrafts and ten similar aircrafts were used as inputs. Contour based moments performed better than the geometric moments in both the data sets. Rotation invariance of two very similar aircrafts showed that contour based moments performed better. The procedure described provides an elegant approach for extracting shape features. These features can also be used as inputs for training and recognizing shapes using neural networks.<>
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