Coarse-to-fine: A RNN-based hierarchical attention model for vehicle re-identification
Vehicle re-identification is an important problem and becomes desirable with the rapid expansion of applications in video surveillance and intelligent transportation. By recalling the identification process of human vision, we are aware that there exists a native hierarchical dependency when humans...
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Zusammenfassung: | Vehicle re-identification is an important problem and becomes desirable with
the rapid expansion of applications in video surveillance and intelligent
transportation. By recalling the identification process of human vision, we are
aware that there exists a native hierarchical dependency when humans identify
different vehicles. Specifically, humans always firstly determine one vehicle's
coarse-grained category, i.e., the car model/type. Then, under the branch of
the predicted car model/type, they are going to identify specific vehicles by
relying on subtle visual cues, e.g., customized paintings and windshield
stickers, at the fine-grained level. Inspired by the coarse-to-fine
hierarchical process, we propose an end-to-end RNN-based Hierarchical Attention
(RNN-HA) classification model for vehicle re-identification. RNN-HA consists of
three mutually coupled modules: the first module generates image
representations for vehicle images, the second hierarchical module models the
aforementioned hierarchical dependent relationship, and the last attention
module focuses on capturing the subtle visual information distinguishing
specific vehicles from each other. By conducting comprehensive experiments on
two vehicle re-identification benchmark datasets VeRi and VehicleID, we
demonstrate that the proposed model achieves superior performance over
state-of-the-art methods. |
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DOI: | 10.48550/arxiv.1812.04239 |