首页> 外文会议>Image Processing, 1997. Proceedings., International Conference on >Multichannel image identification and restoration using continuous spatial domain modeling
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Multichannel image identification and restoration using continuous spatial domain modeling

机译:使用连续空间域建模的多通道图像识别和恢复

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In this paper, a novel identification technique for multichannel image processing is presented. Using the maximum likelihood estimation (ML) approach, the image is represented as an autoregressive (AR) model and blur is described as a continuous spatial domain model. Such a formulation overcomes some major limitations encountered in other ML methods. Moreover, cross-spectral and spatial components are incorporated in the multichannel modeling. It is shown that by incorporating those components, the overall performance is improved significantly. Also, experimental results show that blur extent can be optimally identified from noisy color images that are degraded by uniform linear motion or out-of-focus blurs.
机译:本文提出了一种用于多通道图像处理的新型识别技术。使用最大似然估计(ML)方法,将图像表示为自回归(AR)模型,并将模糊描述为连续空间域模型。这样的表述克服了其他机器学习方法遇到的一些主要限制。此外,在多通道建模中还包含了跨光谱和空间分量。结果表明,通过合并这些组件,可以显着提高整体性能。而且,实验结果表明,可以从由均匀线性运动或离焦模糊导致的噪点彩色图像中最佳地识别模糊程度。

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