CVSep 23, 2022

Multi-Granularity Graph Pooling for Video-based Person Re-Identification

arXiv:2209.11584v139 citationsh-index: 40
Originality Incremental advance
AI Analysis

This work addresses video retrieval for pedestrian identification across cameras, presenting an incremental improvement over existing graph-based methods.

The paper tackles the problem of video-based person re-identification by proposing a graph pooling network (GPNet) that learns multi-granularity graph representations to better aggregate temporal and spatial features, achieving competitive results on four datasets including MARS and DukeMTMC-VideoReID.

The video-based person re-identification (ReID) aims to identify the given pedestrian video sequence across multiple non-overlapping cameras. To aggregate the temporal and spatial features of the video samples, the graph neural networks (GNNs) are introduced. However, existing graph-based models, like STGCN, perform the \textit{mean}/\textit{max pooling} on node features to obtain the graph representation, which neglect the graph topology and node importance. In this paper, we propose the graph pooling network (GPNet) to learn the multi-granularity graph representation for the video retrieval, where the \textit{graph pooling layer} is implemented to downsample the graph. We first construct a multi-granular graph, whose node features denote image embedding learned by backbone, and edges are established between the temporal and Euclidean neighborhood nodes. We then implement multiple graph convolutional layers to perform the neighborhood aggregation on the graphs. To downsample the graph, we propose a multi-head full attention graph pooling (MHFAPool) layer, which integrates the advantages of existing node clustering and node selection pooling methods. Specifically, MHFAPool takes the main eigenvector of full attention matrix as the aggregation coefficients to involve the global graph information in each pooled nodes. Extensive experiments demonstrate that our GPNet achieves the competitive results on four widely-used datasets, i.e., MARS, DukeMTMC-VideoReID, iLIDS-VID and PRID-2011.

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