首页> 外文会议>Computational Science - ICCS 2007 pt.3; Lecture Notes in Computer Science; 4489 >Rotation Invariant Texture Classification Using Gabor Wavelets
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Rotation Invariant Texture Classification Using Gabor Wavelets

机译:使用Gabor小波的旋转不变纹理分类

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This paper presents a new method for rotation invariant texture classification based on Gabor wavelets. The Gabor representation has been shown to be optimal in the sense of minimizing the joint two-dimensional uncertainty in space and frequency, and the Gabor wavelet can be used to decompose an image into multiple scales and multiple orientations. Two group features, i.e. the global feature vector and local feature matrix, can be constructed by the mean and variance of the Gabor filtered image. The global feature vector is rotation invariant, and the local feature matrix can be adjusted by a circular shift operation to rotation invariant so that all images have the same dominant direction. By the two group features, a discriminant can be found to classify the rotated images. In the primary experiments, comparatively high correct classification rates were obtained using a large sample sets with 1998 rotated images of 111 Brodazt texture classes.
机译:提出了一种基于Gabor小波的旋转不变纹理分类的新方法。在最小化空间和频率上的联合二维不确定性的意义上,Gabor表示已被证明是最佳的,并且Gabor小波可用于将图像分解为多个比例和多个方向。可以通过Gabor滤波图像的均值和方差来构造两组特征,即全局特征向量和局部特征矩阵。全局特征向量是旋转不变的,局部特征矩阵可以通过循环移位操作调整为旋转不变的,以便所有图像具有相同的主导方向。通过这两个组特征,可以找到判别器来对旋转图像进行分类。在主要实验中,使用具有111个Brodazt纹理类别的1998年旋转图像的大型样本集,获得了较高的正确分类率。

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