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Local Descriptors Encoded by Fisher Vectors for Person Re-identification

机译:Fisher向量编码的本地描述符,用于人员重新识别

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This paper proposes a new descriptor for person re-identification building on the recent advances of Fisher Vectors. Specifically, a simple vector of attributes consisting in the pixel coordinates, its intensity as well as the first and second-order derivatives is computed for each pixel of the image. These local descriptors are turned into Fisher Vectors before being pooled to produce a global representation of the image. The so-obtained Local Descriptors encoded by Fisher Vector (LDFV) have been validated through experiments on two person re-identification benchmarks (VIPeR and ETHZ), achieving state-of-the-art performance on both datasets.
机译:本文基于Fisher Vectors的最新进展,提出了一种用于人员重新识别的新描述符。具体而言,针对图像的每个像素计算由像素坐标,其强度以及一阶和二阶导数组成的属性的简单向量。这些局部描述符在被合并以生成图像的全局表示之前,先转换为Fisher向量。如此获得的由Fisher Vector(LDFV)编码的本地描述符已通过在两个人的重新识别基准(VIPeR和ETHZ)上进行的实验进行了验证,从而在两个数据集上均达到了最先进的性能。

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