Image classification using compression distance

Yuxuan Lan, R. Harvey
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引用次数: 8

Abstract

The normalised compression distance measures the mutual compressibility of two signals. We show that this distance can be used for classification on real images. Furthermore, the same compressor can also operate on derived features with no further modification. We consider derived features consisting of trees indicating the containment and relative area of connected sets within the image. It had been previously postulated that such trees might be useful features, but they are too complicated for conventional classifiers. The new classifier operating on these trees produces results that are very similar to those obtained on the raw images thus allowing, for the first time, classification using the full trees.
利用压缩距离进行图像分类
归一化压缩距离测量两个信号的相互压缩性。我们证明了这个距离可以用于真实图像的分类。此外,相同的压缩机还可以在派生特征上运行,而无需进一步修改。我们考虑由树组成的衍生特征,表示图像内连接集的包含和相对面积。以前曾假设这样的树可能是有用的特征,但对于传统的分类器来说,它们太复杂了。在这些树上操作的新分类器产生的结果与在原始图像上获得的结果非常相似,从而首次允许使用完整树进行分类。
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