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Video Person Re-identification with Competitive Snippet-similarity Aggregation and Co-attentive Snippet Embedding

机译:视频人重新识别竞争片段相似性聚集和共同关注片段嵌入

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In this paper, we address video-based person re-identification with competitive snippet-similarity aggregation and co-attentive snippet embedding. Our approach divides long person sequences into multiple short video snippets and aggregates the top-ranked snippet similarities for sequence-similarity estimation. With this strategy, the intra-person visual variation of each sample could be minimized for similarity estimation, while the diverse appearance and temporal information are maintained. The snippet similarities are estimated by a deep neural network with a novel temporal co-attention for snippet embedding. The attention weights are obtained based on a query feature, which is learned from the whole probe snippet by an LSTM network, making the resulting embeddings less affected by noisy frames. The gallery snippet shares the same query feature with the probe snippet. Thus the embedding of gallery snippet can present more relevant features to compare with the probe snippet, yielding more accurate snippet similarity. Extensive ablation studies verify the effectiveness of competitive snippet-similarity aggregation as well as the temporal co-attentive embedding. Our method significantly outperforms the current state-of-the-art approaches on multiple datasets.
机译:在本文中,我们地址基于视频的人重新识别,具有竞争性的片段相似性聚集和共同关注片段嵌入。我们的方法将长人序列划分为多个短视频片段,并聚合了序列相似度估计的排名逐次相似度。利用这种策略,可以最小化每个样品的人类视觉变化,以便对相似性估计最小化,而维持各种外观和时间信息。片段相似度由深度神经网络估计,具有用于片段嵌入的新型时间的关注。基于查询特征获得注意力,由LSTM网络从整个探测片段学习,使得由噪声帧影响的产生嵌入量较少。 Gallery Schippet使用探头片段分享相同的查询功能。因此,画廊片段的嵌入可以呈现更相关的功能来与探针片段进行比较,产生更准确的片段相似性。广泛的消融研究验证了竞争性短期相似性聚集的有效性以及时间共关节嵌入。我们的方法显着优于多个数据集上当前最先进的方法。

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