Common Corruption

Research on "common corruptions" in machine learning focuses on improving the robustness of models against real-world image and data distortions like noise, blur, and adverse weather conditions. Current efforts concentrate on benchmarking model performance under various corruption types, exploring the effectiveness of different architectures (including transformers and convolutional neural networks), and developing novel training techniques such as data augmentation and adversarial contrastive learning to enhance resilience. This work is crucial for deploying reliable AI systems in safety-critical applications like autonomous driving and medical diagnosis, where robustness to unforeseen data variations is paramount.

Papers