多维图像的层次张量逼近

Qing Wu, Tian Xia, Yizhou Yu
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引用次数: 17

摘要

视觉数据由多尺度非均匀信号组成。在本文中,我们利用这些特点,开发了一种基于层次张量变换的自适应数据逼近技术。在该技术中,将原始的多维图像转换为信号层次,以暴露其多尺度结构。在层次结构的每一层的信号被进一步划分成一些较小的张量,以暴露其空间非均匀结构。这些较小的张量使用集体张量近似技术进一步变换和修剪。实验结果表明,该方法比现有的泛函逼近方法(包括小波变换、小波包变换和单级张量逼近)具有更高的压缩比。
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Hierarchical Tensor Approximation of Multidimensional Images
Visual data comprises of multi-scale and inhomogeneous signals. In this paper, we exploit these characteristics and develop an adaptive data approximation technique based on a hierarchical tensor-based transformation. In this technique, an original multi-dimensional image is transformed into a hierarchy of signals to expose its multi-scale structures. The signal at each level of the hierarchy is further divided into a number of smaller tensors to expose its spatially inhomogeneous structures. These smaller tensors are further transformed and pruned using a collective tensor approximation technique. Experimental results indicate that our technique can achieve higher compression ratios than existing functional approximation methods, including wavelet transforms, wavelet packet transforms and single-level tensor approximation.
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