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商品描述
This book comprehensively covers the important efforts in improving the quality of images in visual cryptography (VC), with a focus on cases with gray scale images. It not only covers schemes in traditional VC and extended VC for binary secret images, but also the latest development in the analysis-by-synthesis approach.
This book distinguishes itself from the existing literature in three ways. First, it not only reviews traditional VC for binary secret images, but also covers recent efforts in improving visual quality for gray scale secret images. Second, not only traditional quality measures are reviewed, but also measures that were not used for measuring perceptual quality of decrypted secret images, such as Radially Averaged Power Spectrum Density (RAPSD) and residual variance, are employed for evaluating and guiding the design of VC algorithms. Third, unlike most VC books following a mathematical formal style, this book tries to make a balance between engineering intuition and mathematical reasoning. All the targeted problems and corresponding solutions are fully motivated by practical applications and evaluated by experimental tests, while important security issues are presented as mathematical proof. Furthermore, important algorithms are summarized as pseudocodes, thus enabling the readers to reproduce the results in the book. Therefore, this book serves as a tutorial for readers with an engineering background as well as for experts in related areas to understand the basics and research frontiers in visual cryptography.
商品描述(中文翻譯)
本書全面涵蓋了在視覺密碼學(VC)中改善圖像質量的重要努力,特別針對灰階圖像的案例。它不僅涵蓋了傳統 VC 和擴展 VC 在二進位秘密圖像中的方案,還包括了基於分析-合成方法的最新發展。
本書在三個方面與現有文獻有所區別。首先,它不僅回顧了二進位秘密圖像的傳統 VC,還涵蓋了最近在改善灰階秘密圖像視覺質量方面的努力。其次,不僅回顧了傳統的質量衡量標準,還採用了未用於測量解密秘密圖像感知質量的衡量標準,例如徑向平均功率譜密度(Radially Averaged Power Spectrum Density, RAPSD)和殘差變異數,以評估和指導 VC 演算法的設計。第三,與大多數遵循數學形式風格的 VC 書籍不同,本書試圖在工程直覺和數學推理之間取得平衡。所有針對的問題及其相應的解決方案均受到實際應用的充分激勵,並通過實驗測試進行評估,而重要的安全問題則以數學證明的形式呈現。此外,重要的演算法以偽代碼的形式進行總結,使讀者能夠重現書中的結果。因此,本書作為一個教程,旨在幫助具有工程背景的讀者以及相關領域的專家理解視覺密碼學的基本概念和研究前沿。