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Pattern recognition of soldier uniforms with dilated convolutions and a modified encoder-decoder neural network architecture

机译:具有扩张卷积的士兵制服的模式识别和改进的编码器解码器神经网络架构

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摘要

In this paper, we study a deep learning (DL)-based multimodal technology for military, surveillance, and defense applications based on a pixel-by-pixel classification of soldier's image dataset. We explore the acquisition of images from a remote tactical-robot to a ground station, where the detection and tracking of soldiers can help the operator to take actions or automate the tactical-robot in battlefield. The soldier detection is achieved by training a convolutional neural network to learn the patterns of the soldier's uniforms. Our CNN learns from the initial dataset and from the actions taken by the operator, as opposed to the old-fashioned and hard-coded image processing algorithms. Our system attains an accuracy of over 81% in distinguishing the specific soldier uniform and the background. These experimental results prove our hypothesis that dilated convolutions can increase the segmentation performance when compared with patch-based, and fully connected networks.
机译:在本文中,我们基于逐个像素的图像数据集的像素分类,研究了用于军事,监视和防御应用的深度学习(DL)的多式联运技术。 我们探讨从远程战术机器人到地面站的图像获取图像,其中士兵的检测和跟踪可以帮助操作员采取行动或自动化战场中的战术机器人。 通过培训卷积神经网络来学习士兵制服的模式来实现士兵检测。 我们的CNN从初始数据集中学习以及操作员所采取的操作,而不是旧式和硬编码的图像处理算法。 在区分特定士兵统一和背景中,我们的系统达到了超过81%的准确性。 这些实验结果证明了我们的假设,即与基于补丁和完全连接的网络相比,扩张的卷曲可以增加分割性能。

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  • 来源
    《Applied Artificial Intelligence》 |2021年第8期|476-487|共12页
  • 作者单位

    Yachay Univ Expt Technol & Res Sch Math & Computat Sci San Miguel De Urcuqui Ecuador|Kumoh Natl Inst Technol Sci Comp Grp SCG Gumi Si South Korea|Kumoh Natl Inst Technol Smart Data Anal Syst Grp SDAS Gumi Si South Korea;

    Kumoh Natl Inst Technol Dept Aeronaut Mech & Elect Convergence Engn Gumi Si South Korea;

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