Recent progress in computer vision has been fueled by advances in artificial intelligence (AI) using techniques such as deep learning. However, computer vision models are often sensitive to distribution shifts, such as those naturally occurring in real operational data, which can degrade performance and cause unforeseen failure modes. As such, it is critical to perform comprehensive test and evaluation of these models across a wide range of natural effects in order to assure their downstream use and deployment. However, it is often difficult, impractical or simply impossible to collect and annotate datasets incorporating the expected range of conditions in operational domains. Here, we introduce the open source natural robustness toolkit (NRTK), a platform for evaluating the natural robustness of computer vision models through realistic augmentations of datasets. The NRTK package provides a set of validated scene- and sensor-specific perturbations using physics-based modeling of the entire image formation process, covering pre-sensor, at-sensor, and post-sensor perturbations. We demonstrate its modular and flexible nature through the example use cases of evaluating object detection models on satellite and unmanned aerial vehicle (UAV) imagery, where critical sensor parameters such as focal length and aperture diameter can be varied to assess model performance. We also show how the NRTK package can be paired with visualization tools to support the interactive exploration of datasets and their perturbations via NRTK. Our results suggest that natural robustness is a critical dimension for evaluation towards the verification and validation of computer vision models, ensuring their trusted use and deployment. Our code is publicly available at: https://github.com/Kitware/nrtk.
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