Self Supervised
Self-supervised learning (SSL) aims to train machine learning models using unlabeled data by designing pretext tasks that encourage the model to learn useful representations. Current research focuses on improving generalization, mitigating overfitting, and developing efficient architectures like transformers and CNNs for various modalities (images, audio, point clouds, fMRI data). SSL's significance lies in its ability to leverage vast amounts of readily available unlabeled data, leading to improved performance on downstream tasks and reducing the reliance on expensive and time-consuming manual labeling, particularly impacting fields like medical imaging, speech processing, and autonomous driving.
Papers
Improved Multi-Shot Diffusion-Weighted MRI with Zero-Shot Self-Supervised Learning Reconstruction
Jaejin Cho, Yohan Jun, Xiaoqing Wang, Caique Kobayashi, Berkin Bilgic
SSL-Auth: An Authentication Framework by Fragile Watermarking for Pre-trained Encoders in Self-supervised Learning
Xiaobei Li, Changchun Yin, Liyue Zhu, Xiaogang Xu, Liming Fang, Run Wang, Chenhao Lin
ALFA -- Leveraging All Levels of Feature Abstraction for Enhancing the Generalization of Histopathology Image Classification Across Unseen Hospitals
Milad Sikaroudi, Maryam Hosseini, Shahryar Rahnamayan, H. R. Tizhoosh
Multi-Label Self-Supervised Learning with Scene Images
Ke Zhu, Minghao Fu, Jianxin Wu
K-band: Self-supervised MRI Reconstruction via Stochastic Gradient Descent over K-space Subsets
Frederic Wang, Han Qi, Alfredo De Goyeneche, Reinhard Heckel, Michael Lustig, Efrat Shimron
Crowdsourcing Fraud Detection over Heterogeneous Temporal MMMA Graph
Zequan Xu, Qihang Sun, Shaofeng Hu, Jieming Shi, Hui Li
CroSSL: Cross-modal Self-Supervised Learning for Time-series through Latent Masking
Shohreh Deldari, Dimitris Spathis, Mohammad Malekzadeh, Fahim Kawsar, Flora Salim, Akhil Mathur
Can Self-Supervised Representation Learning Methods Withstand Distribution Shifts and Corruptions?
Prakash Chandra Chhipa, Johan Rodahl Holmgren, Kanjar De, Rajkumar Saini, Marcus Liwicki
Self-Supervised and Semi-Supervised Polyp Segmentation using Synthetic Data
Enric Moreu, Eric Arazo, Kevin McGuinness, Noel E. O'Connor
Contrastive Self-Supervised Learning Based Approach for Patient Similarity: A Case Study on Atrial Fibrillation Detection from PPG Signal
Subangkar Karmaker Shanto, Shoumik Saha, Atif Hasan Rahman, Mohammad Mehedy Masud, Mohammed Eunus Ali