Appearance-based person re-identification by intra-camera discriminative models and rank aggregation

Raphael C. Prates, W. R. Schwartz
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引用次数: 13

Abstract

The main challenges in person re-identification are related to different camera acquisition conditions and high inter-class similarities. These aspects motivated us to handle such problems by learning intra-camera discriminative models, based on training samples, to discover representative individuals for a given sample (probe or gallery samples), referred to as prototypes. These prototypes are used to weight the features according to their discriminative power by using the Partial Least Square (PLS) method. We also exploit models built from the gallery and probe samples to generate re-identification results that will be combined in a single ranking using ranking aggregation techniques. According to the experiments, the proposed method achieves state-of-the-art results. They also demonstrate that aggregating the results achieved by our method with results achieved by a distance metric learning method, outperforms the state-of-the-art, e.g., the top-1 rank is increased in almost 10 percent points for VIPeR and PRID 450S data sets.
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基于相机内判别模型和等级聚合的人脸再识别
人脸再识别面临的主要挑战是不同的相机采集条件和高度的类间相似性。这些方面促使我们通过学习基于训练样本的相机内判别模型来处理此类问题,以发现给定样本(探针或画廊样本)的代表性个体,称为原型。利用偏最小二乘法根据特征的判别能力对特征进行加权。我们还利用从图库和探针样本中构建的模型来生成重新识别的结果,这些结果将使用排名聚合技术组合在一个单一的排名中。实验表明,该方法取得了较好的效果。他们还证明,将我们的方法获得的结果与距离度量学习方法获得的结果相结合,优于最先进的方法,例如,VIPeR和PRID 450S数据集的前1名排名提高了近10%。
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