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      SSP-RACL: Classification of Noisy Fundus Images with Self-Supervised Pretraining and Robust Adaptive Credal Loss

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          Abstract

          Fundus image classification is crucial in the computer aided diagnosis tasks, but label noise significantly impairs the performance of deep neural networks. To address this challenge, we propose a robust framework, Self-Supervised Pre-training with Robust Adaptive Credal Loss (SSP-RACL), for handling label noise in fundus image datasets. First, we use Masked Autoencoders (MAE) for pre-training to extract features, unaffected by label noise. Subsequently, RACL employ a superset learning framework, setting confidence thresholds and adaptive label relaxation parameter to construct possibility distributions and provide more reliable ground-truth estimates, thus effectively suppressing the memorization effect. Additionally, we introduce clinical knowledge-based asymmetric noise generation to simulate real-world noisy fundus image datasets. Experimental results demonstrate that our proposed method outperforms existing approaches in handling label noise, showing superior performance.

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          Author and article information

          Journal
          24 September 2024
          2024-10-03
          Article
          2409.18147
          a9e353b0-8050-4c22-af80-3dbd99e1c407

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          IEEE BioCAS 2024
          cs.CV

          Computer vision & Pattern recognition
          Computer vision & Pattern recognition

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