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Discriminant analysis and adaptive wavelet feature selection for statistical object detection

机译:用于统计目标检测的判别分析和自适应小波特征选择

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We utilize the discriminant analysis to select wavelet features for efficient object detection. The analysis applies to the Bayesian classifier and is extended to the case of boosting. Based on the error analysis under the Bayesian decision rule, we reduce the number of coefficients involved in detection to lower the computational cost. Using a hidden Markov tree model to describe the pattern distributions, we introduce the concept of error-bound-tree to relate feature selection to error reduction. The scheme selects discriminative features that are adaptive to the pattern and allows the detector to reach a decision faster.
机译:我们利用判别分析选择小波特征以进行有效的目标检测。该分析适用于贝叶斯分类器,并扩展到增强的情况。基于贝叶斯决策规则下的误差分析,我们减少了检测中涉及的系数数量,以降低计算成本。使用隐藏的马尔可夫树模型描述模式分布,我们引入了错误绑定树的概念,将特征选择与错误减少相关联。该方案选择适合该模式的判别特征,并允许检测器更快地做出决定。

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