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Joint noise reduction motion estimation missing data reconstruction and model parameter estimation for degraded motion pictures

机译:联合降噪运动估计缺失数据重建和降级运动图片的模型参数估计

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Abstract: Image sequence restoration has been steadily gaining in importance with the arrival of digital video broadcasting. Automated treatment of archived video material typically involves dealing with replacement noise in the form of 'blotches' with varying intensity levels and additive 'grain' noise. In the case of replacement noise the problem is essentially one of missing data which must be detected and then reconstructed based upon surrounding spatio- temporal information, while the additive noise can be treated as a noise reduction problem. This paper introduces a fully Bayesian specification of the problem, Markov chain Monte Carlo methodology is applied to the joint detection and removal of both replacement and additive noise components. The work presented builds upon the Bayesian image detection/interpolation methods developed in including now the ability to reduce noise in an image sequence as well as reconstruct the image intensity information within missing regions. !22
机译:摘要:随着数字视频广播的到来,图像序列恢复的重要性一直在稳步提高。存档视频材料的自动化处理通常涉及以强度不同的“斑点”形式处理替换噪声,并添加“颗粒”噪声。在替换噪声的情况下,问题本质上是缺少的数据之一,必须根据周围的时空信息对其进行检测,然后将其重建,而可将附加噪声视为减少噪声的问题。本文介绍了该问题的完整贝叶斯规范,将马尔可夫链蒙特卡罗方法应用于联合检测和去除替换噪声分量和附加噪声分量。提出的工作建立在贝叶斯图像检测/插值方法的基础上,该方法现在包括降低图像序列中的噪声以及重建缺失区域内的图像强度信息的能力。 !22

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