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PARAMETER ESTIMATION FOR OPTIMAL OBJECT RECOGNITION - THEORY AND APPLICATION

机译:最优目标识别的参数估计-理论与应用

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摘要

Object recognition systems involve parameters such as thresholds, bounds and weights. These parameters have to be tuned before the system can perform successfully. A common practice is to choose such parameters manually on an ad hoc basis, which is a disadvantage. This paper presents a novel theory of parameter estimation for optimization-based object recognition where the optimal solution is defined as the global minimum of an energy function. The theory is based on supervised learning from examples. Correctness and instability are established as criteria for evaluating the estimated parameters. A correct estimate enables the labeling implied in each exemplary configuration to be encoded in a unique global energy minimum. The instability is the ease with which the minimum is replaced by a non-exemplary configuration after a perturbation. The optimal estimate minimizes the instability. Algorithms are presented for computing correct and minimal-instability estimates. The theory is applied to the parameter estimation for MRF-based recognition and promising results are obtained. [References: 42]
机译:对象识别系统涉及诸如阈值,界限和权重之类的参数。必须先调整这些参数,然后系统才能成功执行。通常的做法是临时手动选择此类参数,这是一个缺点。本文提出了一种基于参数的估计的新理论,用于基于优化的目标识别,其中最优解定义为能量函数的全局最小值。该理论基于监督中的实例学习。建立正确性和不稳定性作为评估估计参数的标准。正确的估计值可以使每个示例性配置中隐含的标记以唯一的全局能量最小值进行编码。不稳定性是在扰动之后最小值被非示例性配置替代的难易程度。最佳估计可最大程度地减少不稳定性。提出了用于计算正确和最小不稳定估计的算法。将该理论应用于基于MRF的识别参数估计中,并获得了有希望的结果。 [参考:42]

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