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R-PCNN Method to Rapidly Detect Objects on THz Images in Human Body Security Checks

机译:R-CNN方法在人体安全检查中快速检测图像上的物体

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摘要

Terahertz human body security images have low resolution and a low signal-to-noise ratio. In the traditional method, image segmentation, positioning, and identification are applied to detect objects carried by humans in the THz images. However, it is difficult to satisfy the requirements of detection accuracy and speed with this approach. The current research presents a faster detection framework (R-PCNN) combining the preprocessing and structure optimization of Faster R-CNN. The experiment results show that this method can effectively improve the accuracy and speed of object detection in human body THz images. A detection accuracy of 84.5% can be achieved in dense flow scenes, with an average detection time of less than 20 milliseconds for each image.
机译:太赫兹人体安全图像分辨率低,信噪比低。在传统方法中,图像分割,定位和识别被应用于检测人类在THz图像中携带的物体。但是,用这种方法很难满足检测精度和速度的要求。当前的研究提出了一种结合了Faster R-CNN的预处理和结构优化的快速检测框架(R-PCNN)。实验结果表明,该方法可以有效提高人体太赫兹图像中目标检测的准确性和速度。在密集的流动场景中,可以实现84.5%的检测精度,每个图像的平均检测时间少于20毫秒。

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