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首页> 外文期刊>Engineering >Damage Characterization of Composite Structures Using Difference Peak Signal-to-Noise Ratio as a Function of Variable Wavelets (ΔPSNR-ΔW)
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Damage Characterization of Composite Structures Using Difference Peak Signal-to-Noise Ratio as a Function of Variable Wavelets (ΔPSNR-ΔW)

机译:使用差异峰信噪比作为可变小波函数(ΔPSNR-ΔW)的复合结构的损伤表征

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A novel approach employs the principles of medical image analysis using Wavelet Transform (WT) and Difference Peak Signal-to-Noise Ratio (ΔPSNR). Both techniques are combined as a function of different decomposing levels of wavelets and various image search through and slicing levels, which is implemented under MATLAB environment. In this new approach, the structural change due to damage in the component or the presence of foreign bodies appearing in an image taken for a specific structure is uncovered with its extent determined after applying the search through algorithm. Such alteration of the composite structure, which could be masked by the presence of noise, is accounted for using combined WT and PSNR. Effect of Artifacts and Blurring caused by different wavelet types is investigated before choosing an appropriate wavelet, namely Sym8. This new approach, which also reduces the required layers of search within an image, produces a pattern matrix per damaged area and is an excellent way in tracing and modeling damage in structures with ability to predict effects of further damage on components and further application to artificial limbs that could suffer damage and affect users mobility.
机译:一种新颖的方法采用了医学图像分析的原理,该原理使用小波变换(WT)和差分峰信噪比(ΔPSNR)。两种技术都根据不同的小波分解级别以及各种图像搜索级别和切片级别进行了组合,这是在MATLAB环境下实现的。在这种新方法中,通过应用搜索​​算法,可以确定由于部件损坏或在为特定结构拍摄的图像中出现的异物而导致的结构变化,其程度得以确定。使用WT和PSNR的组合可以解决复合结构的这种更改(可能会被噪声掩盖)。在选择合适的小波,即Sym8之前,研究了由不同小波类型引起的伪影和模糊的影响。这种新方法还可以减少图像中所需的搜索层数,可以在每个损坏区域生成图案矩阵,并且是跟踪和建模结构中损坏的绝佳方法,可以预测进一步损坏部件的影响并进一步应用于人工肢体可能会受到损坏并影响使用者的活动能力。

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