行距压缩域文档图像的熵计算

P. Nagabhushan, M. Javed, B. Chaudhuri
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引用次数: 14

摘要

传统上,压缩文档、图像、音频和视频的做法是为了提高数据存储和传输的效率。然而,为了处理或执行任何分析计算,解压缩已成为不可避免的先决条件。在本研究中,我们尝试直接从压缩文档中计算熵,这是一种重要的文档分析方法。我们使用常规熵量词(CEQ)和空间熵量词(SEQ)进行熵计算。获得的熵在建立等价、单词定位和文档检索等应用中很有用。对[1]的所有数据集进行了实验,在字符、单词和行级别上对运行长度压缩域中的压缩文档进行了实验。所开发的算法具有计算效率和空间效率,所得到的结果与[1]中报道的结果吻合100%。
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Entropy Computations of Document Images in Run-Length Compressed Domain
Compression of documents, images, audios and videos have been traditionally practiced to increase the efficiency of data storage and transfer. However, in order to process or carry out any analytical computations, decompression has become an unavoidable pre-requisite. In this research work, we have attempted to compute the entropy, which is an important document analytic directly from the compressed documents. We use Conventional Entropy Quantifier (CEQ) and Spatial Entropy Quantifiers (SEQ) for entropy computations [1]. The entropies obtained are useful in applications like establishing equivalence, word spotting and document retrieval. Experiments have been performed with all the data sets of [1], at character, word and line levels taking compressed documents in run-length compressed domain. The algorithms developed are computational and space efficient, and results obtained match 100% with the results reported in [1].
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