To achieve robustness in Re-Identification, standard methods leverage tracking information in a Video-To-Video fashion. However, these solutions face a large drop in performance for single image queries (e.g., Image-To-Video setting). Recent works address this severe degradation by transferring temporal information from a Video-based network to an Image-based one. In this work, we devise a training strategy that allows the transfer of a superior knowledge, arising from a set of views depicting the target object. Our proposal - Views Knowledge Distillation (VKD) - pins this visual variety as a supervision signal within a teacher-student framework, where the teacher educates a student who observes fewer views. As a result, the student outperforms not only its teacher but also the current state-of-the-art in Image-To-Video by a wide margin (6.3% mAP on MARS, 8.6% on Duke-Video-ReId and 5% on VeRi-776). A thorough analysis - on Person, Vehicle and Animal Re-ID - investigates the properties of VKD from a qualitatively and quantitatively perspective.

Robust Re-Identification by Multiple Views Knowledge Distillation / Porrello, Angelo; Bergamini, Luca; Calderara, Simone. - 12355:(2020), pp. 93-110. ( 16th European Conference on Computer Vision, ECCV 2020 Glasgow, Scotland, UK August 23–28, 2020) [10.1007/978-3-030-58607-2_6].

Robust Re-Identification by Multiple Views Knowledge Distillation

Angelo Porrello;Luca Bergamini;Simone Calderara
2020

Abstract

To achieve robustness in Re-Identification, standard methods leverage tracking information in a Video-To-Video fashion. However, these solutions face a large drop in performance for single image queries (e.g., Image-To-Video setting). Recent works address this severe degradation by transferring temporal information from a Video-based network to an Image-based one. In this work, we devise a training strategy that allows the transfer of a superior knowledge, arising from a set of views depicting the target object. Our proposal - Views Knowledge Distillation (VKD) - pins this visual variety as a supervision signal within a teacher-student framework, where the teacher educates a student who observes fewer views. As a result, the student outperforms not only its teacher but also the current state-of-the-art in Image-To-Video by a wide margin (6.3% mAP on MARS, 8.6% on Duke-Video-ReId and 5% on VeRi-776). A thorough analysis - on Person, Vehicle and Animal Re-ID - investigates the properties of VKD from a qualitatively and quantitatively perspective.
2020
Inglese
16th European Conference on Computer Vision, ECCV 2020
Glasgow, Scotland, UK
August 23–28, 2020
Proceedings of the 16th European Conference on Computer Vision (ECCV) 2020
12355
93
110
9783030586065
Springer Science and Business Media Deutschland GmbH
Deep Learning; Re-Identification; Knowledge Distillation
Porrello, Angelo; Bergamini, Luca; Calderara, Simone
Atti di CONVEGNO::Relazione in Atti di Convegno
273
3
Robust Re-Identification by Multiple Views Knowledge Distillation / Porrello, Angelo; Bergamini, Luca; Calderara, Simone. - 12355:(2020), pp. 93-110. ( 16th European Conference on Computer Vision, ECCV 2020 Glasgow, Scotland, UK August 23–28, 2020) [10.1007/978-3-030-58607-2_6].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1211824
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