基于掩模R-CNN和ResNet-50的军事领域弹孔检测

Tanzil Ahmed, Salman Rahman, A. Mahmud, Md. Abdur Razzak, Dr. Nusrat Sharmin
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引用次数: 0

摘要

轻武器射击训练和比赛是军事领域的常规活动。射击组或子弹组分析是衡量武器精度、射击者的准确性和一致性的标准,也是提高或完善射击能力的一种方法。然而,这种分析机制要么是手动的,要么是半自动的,采用基于图像处理的算法,如模板匹配、直方图均衡化、白平衡、中值和高斯改变、峰值检测和图像减法,在室内设置,无法适应环境条件,如湿度、温度、环境光、风速和降雨等。人工智能或深度学习技术的最新进展探索了促进各个部门自动化的方法。在本文中,我们使用这种深度学习方法实现了军事领域内实时射击系统的自动化,并成功解决了传统图像处理的缺点。我们提出的方法分为两个阶段。第一阶段使用一个概念简单,灵活,通用的目标实例分割框架Mask R-CNN从环境中提取目标区域,在第二阶段,我们将第一阶段的输出分割目标馈送到ResNet-50卷积神经网络架构中以检测弹孔。在实时数据集上进行了多次实验,结果表明,掩模R-CNN分割目标的平均精度为0.87,ResNet-50检测弹孔的平均精度为0.80。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bullet Hole Detection in a Military Domain Using Mask R-CNN and ResNet-50
Small arms shooting practices and competitions are routine activities in the military domain. The shooting group or bullet group analysis serves as a metric for the precision of a weapon, the shooter’s accuracy, and consistency, and as a method for improving or refining one’s shooting abilities. This analysis mechanism, however, is either manual or semi-automatic, employing image processing-based algorithms such as template matching, histogram equalization, white balancing, median and gaussian altering, peak detection, and image subtraction in an indoor setting, which is incapable of adapting to environmental conditions such as humidity, temperature, ambient light, wind speed, and rain, among others. Recent advancements in artificial intelligence or deep learning techniques explored ways to facilitate automation in various sectors. In this paper, we have used such deep learning approaches to automize the shooting system in real-time within a military domain and achieved success in resolving the traditional image processing drawbacks. Our proposed methodology has two phases. The first phase uses Mask R-CNN a conceptually simple, flexible, and general framework for object instance segmentation to extract the target region from the environment, and in the second phase, we fed the output segmented target of the first phase to ResNet-50 a convolutional neural network architecture to detect the bullet holes. Several experiments have been conducted on real-time datasets and the results show 0.87 of average precision using mask R-CNN to segment the target and ResNet-50 give 0.80 to detect bullet holes.
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