Publication | Closed Access
Graph Convolution for Re-Ranking in Person Re-Identification
16
Citations
39
References
2022
Year
Geometric LearningEngineeringMachine LearningVideo RetrievalGraph ConvolutionImage AnalysisData SciencePattern RecognitionMachine VisionFeature LearningData Re-identificationComputer ScienceDeep LearningComputer VisionGraph Convolution NetworksHuman IdentificationSimilarity ComputationGraph Neural NetworkSimilarity Search
Nowadays, deep learning is widely applied to extract features for similarity computation in person re-identification (re-ID). However, the difference between the training data and testing data makes the performance of learned feature degraded during testing. Hence, re-ranking is proposed to mitigate this issue and various algorithms have been developed. However, most of existing re-ranking methods focus on replacing the Euclidean distance with sophisticated distance metrics, which are not friendly to downstream tasks and hard to be used for fast retrieval of massive data in real applications. In this work, we propose a graph-based re-ranking method to improve learned features while still keeping Euclidean distance as the similarity metric. Inspired by graph convolution networks, we develop an operator to propagate features over an appropriate graph. Since graph is the essential key for the propagation, two important criteria are considered for designing the graph, and different graphs are explored accordingly. Furthermore, a simple yet effective method is proposed to generate a profile vector for each tracklet in videos, which helps extend our method to video re-ID. Extensive experiments on three benchmark data sets, e.g., Market-1501, Duke, and MARS, demonstrate the effectiveness of our proposed approach.
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