Multiresolution analysis based sparse dictionary learning for remotely sensed image retrieval

A. Yadav, Adithya Aryasomayajula, Rizwan AhmedAnsari
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引用次数: 2

Abstract

Sparse representation using over-complete dictionaries offers a compact representation with minimal error and yields in compression ratios that are relatively higher than other conventional lossless compression algorithms. Multiresolution analysis (MRA) offers a framework to decompose and observe a signal at various resolutions thus allows representing the signal in a way that makes the retrieval convenient.In this paper, we propose a wavelet based MRA framework for image compression by sparse representation of the decomposition of an image, trained on over-complete dictionary. The dictionaries are trained using algorithms like the singular value decomposition (SVD), method of optimal directions (MOD) and the sparse representation is done using the pursuit algorithm. The method is tested on remotely sensed images captured by Worldview-1 satellite and reconstructions from the dictionaries using proposed framework also yield a low root mean square error and a high spatial similarity index (SSIM) which attests to the high quality of reconstructed images. The results obtained showthe storage of the over-complete dictionaries trained on the various subbands, keep on reducing as the level of decomposition increases lead to a better compression ratio than the sparse representation of an image at a single resolution while maintaining the same image quality.
基于多分辨率分析的稀疏字典学习遥感图像检索
使用过完备字典的稀疏表示提供了一种紧凑的表示,误差最小,压缩比相对高于其他传统的无损压缩算法。多分辨率分析(MRA)提供了一个框架来分解和观察不同分辨率的信号,从而允许以一种方便检索的方式表示信号。在本文中,我们提出了一个基于小波的MRA框架,通过对图像分解的稀疏表示,在过完备字典上进行训练,用于图像压缩。使用奇异值分解(SVD)、最优方向法(MOD)等算法训练字典,使用寻迹算法进行稀疏表示。该方法在Worldview-1卫星遥感图像上进行了测试,结果表明,使用该框架从词典中重建的图像具有较低的均方根误差和较高的空间相似指数(SSIM),证明了重建图像的高质量。结果表明,随着分解水平的增加,在各个子带上训练的过完备字典的存储不断减少,在保持相同图像质量的情况下,在单一分辨率下比稀疏表示图像具有更好的压缩比。
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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