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whu-nercms at trecvid2021:instance search task

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arxiv 2111.00228 v2 pith:FVNCN6CY submitted 2021-10-30 cs.CV cs.IRcs.MM

whu-nercms at trecvid2021:instance search task

classification cs.CV cs.IRcs.MM
keywords retrievalactionmethodsautomaticdetectioninteractiveresultsperson
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We will make a brief introduction of the experimental methods and results of the WHU-NERCMS in the TRECVID2021 in the paper. This year we participate in the automatic and interactive tasks of Instance Search (INS). For the automatic task, the retrieval target is divided into two parts, person retrieval, and action retrieval. We adopt a two-stage method including face detection and face recognition for person retrieval and two kinds of action detection methods consisting of three frame-based human-object interaction detection methods and two video-based general action detection methods for action retrieval. After that, the person retrieval results and action retrieval results are fused to initialize the result ranking lists. In addition, we make attempts to use complementary methods to further improve search performance. For interactive tasks, we test two different interaction strategies on the fusion results. We submit 4 runs for automatic and interactive tasks respectively. The introduction of each run is shown in Table 1. The official evaluations show that the proposed strategies rank 1st in both automatic and interactive tracks.

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