CVNov 7, 2021

Natural Adversarial Objects

arXiv:2111.04204v17 citations
Originality Synthesis-oriented
AI Analysis

This addresses the issue of model robustness for computer vision researchers and practitioners, but it is incremental as it primarily provides a new dataset for evaluation rather than a novel solution.

The authors tackled the problem of object detection models lacking robustness to adversarial and out-of-distribution data by introducing the Natural Adversarial Objects (NAO) dataset, which causes state-of-the-art models like EfficientDet-D7 to drop in mean average precision by 74.5% compared to standard benchmarks.

Although state-of-the-art object detection methods have shown compelling performance, models often are not robust to adversarial attacks and out-of-distribution data. We introduce a new dataset, Natural Adversarial Objects (NAO), to evaluate the robustness of object detection models. NAO contains 7,934 images and 9,943 objects that are unmodified and representative of real-world scenarios, but cause state-of-the-art detection models to misclassify with high confidence. The mean average precision (mAP) of EfficientDet-D7 drops 74.5% when evaluated on NAO compared to the standard MSCOCO validation set. Moreover, by comparing a variety of object detection architectures, we find that better performance on MSCOCO validation set does not necessarily translate to better performance on NAO, suggesting that robustness cannot be simply achieved by training a more accurate model. We further investigate why examples in NAO are difficult to detect and classify. Experiments of shuffling image patches reveal that models are overly sensitive to local texture. Additionally, using integrated gradients and background replacement, we find that the detection model is reliant on pixel information within the bounding box, and insensitive to the background context when predicting class labels. NAO can be downloaded at https://drive.google.com/drive/folders/15P8sOWoJku6SSEiHLEts86ORfytGezi8.

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