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Class Adaptive Network Calibration

  • Bingyuan Liu*
  • , Jérôme Rony*
  • , Adrian Galdran
  • , Jose Dolz
  • , Ismail Ben Ayed
  • *Autor correspondiente de este trabajo
  • École de technologie supérieure

Producción científica: Capítulo del libro/informe/acta de congresoContribución a la conferenciarevisión exhaustiva

18 Citas (Scopus)

Resumen

Recent studies have revealed that, beyond conventional accuracy, calibration should also be considered for training modern deep neural networks. To address miscalibration during learning, some methods have explored different penalty functions as part of the learning objective, along-side a standard classification loss, with a hyper-parameter controlling the relative contribution of each term. Nevertheless, these methods share two major drawbacks: 1) the scalar balancing weight is the same for all classes, hindering the ability to address different intrinsic difficulties or imbalance among classes; and 2) the balancing weight is usually fixed without an adaptive strategy, which may prevent from reaching the best compromise between accuracy and calibration, and requires hyper-parameter search for each application. We propose Class Adaptive Label Smoothing (CALS) for calibrating deep networks, which allows to learn class-wise multipliers during training, yielding a powerful alternative to common label smoothing penalties. Our method builds on a general Augmented Lagrangian approach, a well-established technique in constrained optimization, but we introduce several modifications to tailor it for large-scale, class-adaptive training. Comprehensive evaluation and multiple comparisons on a variety of benchmarks, including standard and long-tailed image classification, semantic segmentation, and text classification, demonstrate the superiority of the proposed method. The code is available at https://github.com/by-liu/CALS.

Idioma originalInglés
Título de la publicación alojadaProceedings - 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2023
EditorialIEEE Computer Society
Páginas16070-16079
Número de páginas10
ISBN (versión digital)9798350301298
DOI
EstadoPublicada - 2023
Publicado de forma externa
Evento2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2023 - Vancouver, Canadá
Duración: 18 jun 202322 jun 2023

Serie de la publicación

NombreProceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
Volumen2023-June
ISSN (versión impresa)1063-6919

Conferencia

Conferencia2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2023
País/TerritorioCanadá
CiudadVancouver
Período18/06/2322/06/23

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