Shape discrimination using integral features

A. Hiroike, Y. Mori, A. Sakurai
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引用次数: 1

Abstract

"Integral features" are calculated by summing the local features over all the pixels, where the local features are determined by the state of the neighborhood of each pixel. The states are defined by using a two-dimensional series of mask functions on the polar coordinate system with the logarithmic scale of r-direction. This definition enables the efficient extraction of features from any arbitrary distant area. The features for shape discrimination are constructed from the short-range correlations of the gradients of the image data. For discrimination of image data we used the linear model as used in the multivariate analysis. We also developed nonlinear model learning by maximizing the discriminant efficiency. In the models, each pixel has the value that represents the validity of discrimination and weighted summations are performed when the integral features are calculated. The validity of the linear and nonlinear models is verified in experiments using the image data of real objects.
利用积分特征进行形状判别
“积分特征”是通过对所有像素的局部特征求和来计算的,其中局部特征由每个像素的邻域状态决定。在极坐标系下,用对数尺度的r方向上的二维掩模函数序列来定义状态。这个定义可以有效地从任意遥远的区域提取特征。形状识别的特征是由图像数据梯度的短距离相关性构建的。对于图像数据的判别,我们使用了多元分析中使用的线性模型。我们还通过最大化判别效率发展了非线性模型学习。在模型中,每个像素都有代表识别有效性的值,在计算积分特征时进行加权求和。利用真实物体的图像数据验证了线性和非线性模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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