Surveillance systems integration for real time object identification using weighted bounding single neural network

Ryann Alimuin, Aldrich Guiron, E. Dadios
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引用次数: 1

Abstract

In this paper, an implementation of a single neural network that classifies objects using bounding boxes and class probabilities is utilized. This features are combined with a real time surveillance system that can identify multiple targets at the same time. YOLO9000 is a contemporary tool in object detection that can detect and recognize multiple targets under different categories in real-time. The system uses a multi-scale training that varies between sizes and recognizable patterns. Training of the single neural network upon detection and classification of a target varies depending upon the computer specifications. Being a classified as a simple expert system, it may less likely predict false positive results if objects are not pre-trained, but through proper intensive training and more image inputs it can predict objects in a more precise classification. This research is intended to integrate the YOLO9000 67fps concurrent monitor with surveillance hardware.
基于加权边界单神经网络的监控系统集成实时目标识别
本文利用边界框和类概率对对象进行分类的单一神经网络实现。这一特点与实时监控系统相结合,可以同时识别多个目标。YOLO9000是一种现代的目标检测工具,可以实时检测和识别不同类别下的多个目标。该系统使用多尺度训练,在大小和可识别的模式之间变化。单个神经网络在检测和分类目标时的训练取决于计算机规格。作为一个简单的分类专家系统,如果没有对对象进行预训练,它可能不太可能预测出假阳性结果,但通过适当的强化训练和更多的图像输入,它可以预测出更精确的分类对象。本研究旨在将YOLO9000 67fps并发监视器与监控硬件集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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