The devil is in the details: Self-supervised attention for vehicle re-identification
Computer Vision–ECCV 2020: 16th European Conference, Glasgow, UK, August 23–28 …, 2020•Springer
In recent years, the research community has approached the problem of vehicle re-
identification (re-id) with attention-based models, specifically focusing on regions of a
vehicle containing discriminative information. These re-id methods rely on expensive key-
point labels, part annotations, and additional attributes including vehicle make, model, and
color. Given the large number of vehicle re-id datasets with various levels of annotations,
strongly-supervised methods are unable to scale across different domains. In this paper, we …
identification (re-id) with attention-based models, specifically focusing on regions of a
vehicle containing discriminative information. These re-id methods rely on expensive key-
point labels, part annotations, and additional attributes including vehicle make, model, and
color. Given the large number of vehicle re-id datasets with various levels of annotations,
strongly-supervised methods are unable to scale across different domains. In this paper, we …
Abstract
In recent years, the research community has approached the problem of vehicle re-identification (re-id) with attention-based models, specifically focusing on regions of a vehicle containing discriminative information. These re-id methods rely on expensive key-point labels, part annotations, and additional attributes including vehicle make, model, and color. Given the large number of vehicle re-id datasets with various levels of annotations, strongly-supervised methods are unable to scale across different domains. In this paper, we present Self-supervised Attention for Vehicle Re-identification (SAVER), a novel approach to effectively learn vehicle-specific discriminative features. Through extensive experimentation, we show that SAVER improves upon the state-of-the-art on challenging VeRi, VehicleID, Vehicle-1M and VERI-Wild datasets.
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