"Natural Adversarial Objects" (NAO) dataset is a challenging robustness evaluation dataset for models trained on MSCOCO
π Models generally perform well on large scale training sets
π They generalize on test sets coming from the same distribution
π When using NAO dataset, EfficientDet-D7 mAP reduced by 74.5% compared to MSCOCO
π Faster RCNN reduced by 36.3% compared to MSCOCO
π They evaluated 7 SOTA models, and showed they consistently fail to perform accurately on NAO, comparing to MSCOCO
π The drop is present on both in-distribution and out-of-distribution objects
π They showed models are sensitive to local texture but insensitive to background change, leading such models to be susceptible to natural adversarial objects
π They showed that these naturally adversarial objects are difficult to classify correctly due to the "blind-spots" in the MSCOCO dataset
π They explained the procedure of creating such a dataset which can be useful for creating similar datasets in the future
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