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Robust Adjusted Likelihood Function for Image Analysis

机译:图像分析的强大调整似然函数

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Model misspecification has been a major concern in practical model based image analysis. The underlying assumptions of generative processes usually can not exactly describe real-world data samples, which renders the maximum likelihood estimation (MLE) and the Bayesian decision methods unreliable. In this work we study a robust adjusted likelihood (RAL) function that can improve image classification performance under misspecified models. The RAL is calculated by raising the conventional likelihood function to a positive power and multiplying it with a scaling factor. Similar to model parameter estimation, these two new RAL parameters, i.e. the power and the scaling factor, are estimated from the training data using minimum error rate method. In two-category classification case, this RAL is equivalent to a linear discriminant function in log-likelihood space. To demonstrate the effectiveness of this RAL, we first simulate a model misspecification scenario, in which two Rayleigh sources are misspecified as Gaussian distributions. The Gaussian parameters and the RAL parameters are estimated accordingly from the training data, and the two RAL parameters are studied separately. The simulation results show that the Bayes decisions based on maximum-RAL yield higher classification accuracy than the decisions based on conventional maximum-likelihood. We further apply the RAL in automatic target recognition (ATR) of SAR images. Two target classes, i.e. t72 and bmp2, from MSTAR SAR target dataset are used in this study. The target signatures are modeled using Gaussian mixture models (GMMs) with five mixtures for each class. Image classification results again demonstrate a clear advantage of the proposed approach.
机译:模型拼盘在实际模型的图像分析中是一个主要问题。生成过程的潜在假设通常不能完全描述现实世界的数据样本,这使得最大似然估计(MLE)和贝叶斯决策方法不可靠。在这项工作中,我们研究了一个强大的调整后的似然(RAL)函数,可以在误报模型下提高图像分类性能。通过将传统的似然函数提高到正功率并将其与缩放因子乘以来计算RAL。类似于模型参数估计,这两个新的RAL参数,即功率和缩放因子,使用最小误差率方法从训练数据估计。在两个类别分类情况下,该RAL等同于日志似然空间中的线性判别函数。为了展示该RAL的有效性,我们首先模拟了模型拼写场景,其中两个瑞利源被击败为高斯分布。相应地从训练数据估计高斯参数和RAL参数,并且分别研究了两个RAL参数。仿真结果表明,贝叶斯基于最大RAL的决定,基于传统最大可能性的决策,基于最大RAL产生更高的分类精度。我们进一步将RAL应用于SAR图像的自动目标识别(ATR)。本研究使用了来自MSTAR SAR目标数据集的两个目标类,即T72和BMP2。目标签名是使用高斯混合模型(GMM)的建模,每个类别为五种混合物。图像分类结果再次表现出拟议方法的清晰优势。

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