Correlated Corrupted Dataset is an evaluation set that consists of realistic visible-infrared (V-I) corruptions allowing for models' corruption robustness evaluation. Initially proposed for multimodal person re-identification, our dataset can also be used for the evaluation of V-I cross-modal approaches. Corruptions of the visible modality are the twenty corruptions proposed by Chen & al. in the "Benchmarks for Corruption Invariant Person Re-identification" paper. Corruptions of the infrared modalities have been proposed in our paper, introducing 19 corruptions that respect the infrared modality encoding. In practice, for co-located visible-infrared cameras, weather-related corruptions should, for example, affect each camera. Also, blur-related corruption would likely occur in both visible and infrared cameras. This dataset tackles this aspect by considering the eventual correlations that may occur from one modality camera to another.

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