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Smoother Soft-NMS for Overlapping Object Detection in X-Ray Images

机译:X射线图像中的重叠对象检测的更平滑的软网

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As a contactless security technology, X-ray security inspection machine is widely used in the detection of dangerous object in all kinds of densely populated public places to ensure the safety. Unlike a natural image, various objects overlapping with each other can be observed in an X-ray image for its perspectivity. It brings us a challenge that the traditional NMS (Non-maximum suppression) algorithm will suppress the less significant objects. In this paper, we propose a Smoother Soft NMS based on the difference in aspect ratios and areas of different object bounding boxes to improve the accuracy of overlapping object detection. We also propose a special data augmentation method to simulate the generation of complex samples of overlapping objects. On our dataset, we boost the mean Average Precision of ResNet-101 FPN from 89.44% to 96.67% and Cascade R-CNN from 96.43% to 97.21%. Detector trained by Smoother Soft NMS has a significant improvement in overlapping cases.
机译:作为非接触式安全技术,X射线安全检测机广泛用于检测各种密集的公共场所的危险物体,以确保安全。与自然图像不同,可以在X射线图像中观察到彼此重叠的各种物体以其透视效力。它为我们带来了一个挑战,即传统的NMS(非最大抑制)算法将抑制较差的对象。在本文中,我们基于横向比和不同物体边界框的差异来提出更平滑的软NMS,以提高重叠对象检测的准确性。我们还提出了一种特殊的数据增强方法来模拟重叠对象的复杂样本的生成。在我们的数据集上,我们将Reset-101 FPN的平均平均精度从89.44%提高到96.67%,级联R-CNN从96.43%到97.21%。通过更平滑的软NMS培训的探测器具有重叠案件的显着改善。

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