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Guided Classification using CCV and Wavelet Features for Greenery and Non-Greenery Images

机译:使用CCV和小波特征对绿化和非绿化图像进行引导分类

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This paper focuses on finding the image features in both spatial and wavelet domain and applied that for greenery and non-greenery image classification. The spatial color feature called Guided Color Coherence Feature(GCCF) on6; Guided Distance Feature in Wavelet(GDFW) are calculated for the purpose of classification. The color coherence vector is constructed for all images and is used to find three GCCFs namely ??H, ??G on6; ??I . For finding Guided Distance Feature in Wavelet (GDFW), the input images are decomposed into 16 blocks using 2-dimensional discrete wavelet transform. Then wavelet image feature vector is formed by calculating mean and variance in each block. The difference between guide wavelet image and input wavelet image is named as Guided Distance Feature in Wavelet(GDFW) is calculated. Here one or more guide images are used for finding these guided features. These parameters are given in different combinations as input to the Adpative Neuro Fuzzy Inference System(ANFIS). The performance of system is illustrated with a set of 600 images containing both greenery and non-greenery images.
机译:本文着重于在空间和小波域中寻找图像特征,并将其应用于绿化和非绿化图像分类。空间色彩特征称为向导色彩相干特征(GCCF)on6;为了进行分类,计算了小波(GDFW)中的引导距离特征。为所有图像构建颜色相干矢量,并用于查找三个GCCF,即?? H ,?? G on6; ?? I 。为了找到小波中的导向距离特征(GDFW),使用二维离散小波变换将输入图像分解为16个块。然后通过计算每个块的均值和方差来形成小波图像特征向量。计算了导波小波图像与输入小波图像之间的差异,计算了小波中的导波距离特征(GDFW)。这里,一个或多个引导图像用于找到这些引导特征。这些参数以不同的组合形式给出,作为自适应神经模糊推理系统(ANFIS)的输入。用一组包含绿化和非绿化图像的600张图像来说明系统的性能。

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