首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.2; 20060507-13; Graz(AT) >Region Covariance: A Fast Descriptor for Detection and Classification
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Region Covariance: A Fast Descriptor for Detection and Classification

机译:区域协方差:检测和分类的快速描述符

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摘要

We describe a new region descriptor and apply it to two problems, object detection and texture classification. The covariance of d-features, e.g., the three-dimensional color vector, the norm of first and second derivatives of intensity with respect to x and y, etc., characterizes a region of interest. We describe a fast method for computation of covari-ances based on integral images. The idea presented here is more general than the image sums or histograms, which were already published before, and with a series of integral images the covariances are obtained by a few arithmetic operations. Covariance matrices do not lie on Euclidean space, therefore we use a distance metric involving generalized eigenvalues which also follows from the Lie group structure of positive definite matrices. Feature matching is a simple nearest neighbor search under the distance metric and performed extremely rapidly using the integral images. The performance of the covariance features is superior to other methods, as it is shown, and large rotations and illumination changes are also absorbed by the covariance matrix.
机译:我们描述了一个新的区域描述符,并将其应用于两个问题,对象检测和纹理分类。 d特征的协方差,例如三维颜色向量,强度相对于x和y的一阶和二阶导数的范数等,表征了感兴趣的区域。我们描述了一种基于积分图像计算协方差的快速方法。这里提出的想法比以前已经发布的图像总和或直方图更笼统,并且通过一系列积分图像,可以通过一些算术运算获得协方差。协方差矩阵不在欧几里得空间上,因此我们使用涉及广义特征值的距离度量,该距离度量也遵循正定矩阵的李群结构。特征匹配是在距离度量标准下的简单最近邻搜索,并使用积分图像极其快速地执行。如图所示,协方差特征的性能优于其他方法,并且协方差矩阵还可以吸收较大的旋转和照明变化。

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