Vision models often fail systematically on groups of data that share common semantic characteristics (e.g., rare objects or unusual scenes), but identifying these failure modes is a challenge. We introduce AdaVision, an interactive process for testing vision models which helps users identify and fix coherent failure modes. Given a natural language description of a coherent group, AdaVision retrieves relevant images from LAION-5B with CLIP. The user then labels a small amount of data for model correctness, which is used in successive retrieval rounds to hill-climb towards high-error regions, refining the group definition. Once a group is saturated, AdaVision uses GPT-3 to suggest new group descriptions for the user to explore. We demonstrate the usefulness and generality of AdaVision in user studies, where users find major bugs in state-of-the-art classification, object detection, and image captioning models. These user-discovered groups have failure rates 2-3x higher than those surfaced by automatic error clustering methods. Finally, finetuning on examples found with AdaVision fixes the discovered bugs when evaluated on unseen examples, without degrading in-distribution accuracy, and while also improving performance on out-of-distribution datasets.
Adaptive Testing of Computer Vision Models
AdaVision, an interactive testing process, identifies and fixes coherent failure modes in vision models by iteratively refining user-defined groups and suggesting new ones, leading to significant bug discovery and model improvement.
- Year
- 2022
- Venue
- ICCV 2023 1
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2212.02774v2ARXIV-DEFAULT
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