Detection and Recognition of Security Detection Object Based on Yolo9000

Zhongqiu Liu, Jianchao Li, Y. Shu, Dongping Zhang
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引用次数: 23

Abstract

In this paper, a convolutional neural network model based on YOLO9000 is introduced to meet the need of real-time engineering computing. This network model can study and classify the targets in depth, aiming at the characteristics of scissors and aerosols. The characteristics have various kinds such as overlap, cover and multiscale. At the present stage, the average speed is 68 FPS on the windows platform with GPU (Geforce GTX Titan X) acceleration. In addition, the average precision and recall rate are 94. 5%, 92. 6%, respectively.
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基于Yolo9000的安全检测对象的检测与识别
本文介绍了一种基于YOLO9000的卷积神经网络模型,以满足实时工程计算的需要。该网络模型可以针对剪刀和气溶胶的特点,对目标进行深入的研究和分类。具有重叠、覆盖、多尺度等多种特征。目前,在GPU (Geforce GTX Titan X)加速的windows平台上,平均速度为68 FPS。平均查准率和查全率为94。5%, 92。6%,分别。
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