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A Belief-Based Approach for Adaptive Image Processing

机译:基于信念的自适应图像处理方法

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This paper proposes a new approach to the problem of intelligently regulating image-processing parameters of a distributed network. The proposed approach is based on two-step probabilistic process: (a) belief updating, which consists in computing a functional cost at each node of the network and, (b) belief maximization, which depends on maximizing this functional cost by using a stochastic optimization algorithm. The architecture of an image processing system, consisting of three modules connected in a chain-like structure, is presented as an example showing the capabilities of the proposed approach. Each module is provided with a priori information about the set of parameters that manage a particular data transformation, and with evaluation criteria to judge data quality and to decide on the parameters to be adjusted. Experimental results obtained by using a digitally controlled camera and lens objective, are presented to show the validity of the proposed approach.
机译:针对智能调节分布式网络图像处理参数的问题,本文提出了一种新方法。所提出的方法基于两步概率过程:(a)信念更新,其在于计算网络的每个节点上的功能成本,以及(b)信念最大化,其取决于通过使用随机数来最大化该功能成本优化算法。以图像处理系统的架构为例,该系统由以链状结构连接的三个模块组成,显示了所提出方法的功能。每个模块都具有有关管理特定数据转换的参数集的先验信息,并具有评估标准以判断数据质量并决定要调整的参数。通过使用数字控制的相机和镜头物镜获得的实验结果被提出,以表明该方法的有效性。

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