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Deep salient-Gaussian Fisher vector encoding of the spatio-temporal trajectory structures for person re-identification

机译:时空轨迹结构的深度显着高斯费舍尔矢量编码,用于人员重新识别

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摘要

In this paper, we propose a deep spatio-temporal appearance (DSTA) descriptor for person re-identification (re-ID). The proposed descriptor is based on the deep Fisher vector (FV) encoding of the trajectory spatio-temporal structures. These have the advantage of robustly handling the misalignment in the pedestrian tracklets. The deep encoding exploits the richness of the spatio-temporal structural information around the trajectories. This is achieved by hierarchically encoding the trajectory structures leveraging a larger tracklet neighborhood scale when moving from one layer to the next one. In order to eliminate the noisy background located around the pedestrian and model the uniqueness of its identity, the deep FV encoder is further enriched towards the deep Salient-Gaussian weighted FV (deepSGFV) encoder by integrating the pedestrian Gaussian and saliency templates in the encoding process, respectively. The proposed descriptor produces competitive accuracy with respect to state-of-the art methods and especially the deep CNN ones without necessitating either pre-training or data augmentation on four challenging pedestrian video datasets: PRID2011, i-LIDS-VID, Mars and LPW. The further combination of DSTA with deep CNN boosts the current state-of-the-art methods and demonstrates their complementarity.
机译:在本文中,我们提出了一种用于人员重新识别(re-ID)的深度时空出现(DSTA)描述符。所提出的描述符基于轨迹时空结构的深度Fisher矢量(FV)编码。这些具有坚固地处理行人小径中的未对准的优点。深度编码利用了轨迹周围时空结构信息的丰富性。这是通过在从一层移动到下一层时,利用较大的小轨迹邻域比例对轨迹结构进行分层编码来实现的。为了消除行人周围的嘈杂背景并建模其身份的唯一性,通过在编码过程中整合行人高斯和显着性模板,将深FV编码器进一步丰富到深凸高斯加权FV(deepSGFV)编码器, 分别。相对于最新方法,尤其是深层CNN方法,提出的描述符可产生竞争性准确性,而无需对四个具有挑战性的行人视频数据集进行预训练或数据增强:PRID2011,i-LIDS-VID,Mars和LPW。 DSTA与深层CNN的进一步结合增强了当前的最新方法,并证明了它们的互补性。

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