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Feature extraction by correntropy based average neighborhood margin maximization

机译:基于熵的平均邻域余量最大化的特征提取

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Average neighborhood margin maximization (ANMM) is a feature extraction method to make homogeneous points collect as near as possible and heterogeneous points disperse as far away as possible. To enhance the anti-noise ability of ANMM, correntropy based average neighborhood margin maximization (CANMM) is proposed in this paper. This method utilizes correntropy to substitute the Euclidean distance for measuring the similarity between the given data, and uses the maximum correntropy criterion to replace the maximum distance criterion, which makes CANMM more robust. The experimental results on three benchmark face databases validate the effectiveness of the proposed method.
机译:平均邻域裕量最大化(ANMM)是一种特征提取方法,用于使同质点收集得尽可能近,异质点分布得越远越好。为了提高ANMM的抗噪声能力,本文提出了基于熵的平均邻域余量最大化(CANMM)。该方法利用熵来替代欧几里得距离来测量给定数据之间的相似性,并使用最大熵准则来代替最大距离准则,这使得CANMM更加健壮。在三个基准人脸数据库上的实验结果验证了该方法的有效性。

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