TL;DR
This paper introduces Mix-Paste, a data augmentation technique that improves X-ray prohibited item detection robustness under noisy annotations by mixing item patches and suppressing large losses.
Contribution
The paper proposes a novel Mix-Paste augmentation method and an item-based large-loss suppression strategy to enhance detection accuracy with noisy annotations.
Findings
Mix-Paste improves detection performance on noisy X-ray datasets.
The method generalizes well to noisy MS-COCO dataset.
Significant robustness gains over existing methods.
Abstract
Automatic X-ray prohibited item detection is vital for public safety. Existing deep learning-based methods all assume that the annotations of training X-ray images are correct. However, obtaining correct annotations is extremely hard if not impossible for large-scale X-ray images, where item overlapping is ubiquitous.As a result, X-ray images are easily contaminated with noisy annotations, leading to performance deterioration of existing methods.In this paper, we address the challenging problem of training a robust prohibited item detector under noisy annotations (including both category noise and bounding box noise) from a novel perspective of data augmentation, and propose an effective label-aware mixed patch paste augmentation method (Mix-Paste). Specifically, for each item patch, we mix several item patches with the same category label from different images and replace the original…
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