CVJul 26, 2019

MVB: A Large-Scale Dataset for Baggage Re-Identification and Merged Siamese Networks

arXiv:1907.11366v115 citations
Originality Synthesis-oriented
AI Analysis

This addresses baggage re-identification in airport security, providing a specialized dataset and baseline method, but it is incremental as it adapts existing re-identification techniques to a new domain.

The authors introduced MVB, a large-scale dataset for baggage re-identification with 4519 identities and 22660 images, and proposed a merged Siamese network as a baseline model, achieving performance evaluated on this dataset.

In this paper, we present a novel dataset named MVB (Multi View Baggage) for baggage ReID task which has some essential differences from person ReID. The features of MVB are three-fold. First, MVB is the first publicly released large-scale dataset that contains 4519 baggage identities and 22660 annotated baggage images as well as its surface material labels. Second, all baggage images are captured by specially-designed multi-view camera system to handle pose variation and occlusion, in order to obtain the 3D information of baggage surface as complete as possible. Third, MVB has remarkable inter-class similarity and intra-class dissimilarity, considering the fact that baggage might have very similar appearance while the data is collected in two real airport environments, where imaging factors varies significantly from each other. Moreover, we proposed a merged Siamese network as baseline model and evaluated its performance. Experiments and case study are conducted on MVB.

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