首页> 外文会议>International Conference on Advances in Computing, Communications and Informatics >Human Crawl vs Animal Movement and Person with Object Classifications Using CNN for Side-view Images from Camera
【24h】

Human Crawl vs Animal Movement and Person with Object Classifications Using CNN for Side-view Images from Camera

机译:人类爬行与动物运动和具有对象分类的人,使用CNN从相机侧视图像

获取原文

摘要

An optical camera-based intrusion classification system (Light Intrusion DeTection systEm named as acronym LITE) for an outdoor setting was recently developed by a superset of the authors. The system classified between human and animal images captured in a side-view manner based on the height. Based on the system and algorithm design, most probably human-crawl would be classified as animal by the LITE. In this paper, classification between human-crawl and animal is addressed. In addition to this work, classification of person with weapon versus person with vehicle is also addressed (referred as person with object) to provide more information about the type of intrusions. A Convolutional Neural Network (CNN) based approach is used to solve the above stated two problems. In the case of “person with object” classification, a study of different CNN architectures was carried out and analysis corresponding to that is presented. In case of human crawl vs animal movement, performance results corresponding to only the best architecture model is provided among the many tried models. Further on, additional insights are provided about the classification using the attention heat maps and t-SNE plots. The test classification accuracies for human-crawl vs animal and person with object classification on the recorded data are close to 95.65% and 90%, respectively. The LITE, having the Odroid C2 (OC2) Single-Board Computer (SBC) with CNN-based classification algorithm for human-crawl versus animal task ported on it, was deployed in an outdoor setting for a realtime deployment. It provided a classification accuracy close to 92%.
机译:最近由作者的超集开发了一种基于光学摄像机的入侵分类系统(名为acronym lite的光入侵检测系统)。基于高度以侧视图方式捕获的人与动物图像之间的系统。基于系统和算法的设计,大多数人爬行将被lex被归类为动物。在本文中,解决了人类爬行和动物之间的分类。除了这项工作之外,还解决了带有车辆的武器与人员的人的分类(与对象的人称为人员),以提供有关入侵类型的更多信息。基于卷积神经网络(CNN)的方法用于解决上述两个问题。在“具有对象的人”分类的情况下,对不同的CNN架构进行了研究,并呈现了对应的分析。在人类爬行的情况下,在许多尝试模型中提供了对应于最佳架构模型的性能结果。此外,使用注意热图和T-SNE图提供了关于分类的额外见解。记录数据对象分类的人类爬行VS动物和人物的测试分类准确性分别接近95.65%和90%。具有具有CNN的分类算法的ODTroid C2(OC2)单板计算机(SBC)的Lite,在其上移植到了用于人的人爬网的分类算法,在实时部署的室外设置中部署。它提供了接近92%的分类准确性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号