Computational Intelligence Based Point of Interest Detection by Video Surveillance Implementations

Emre Tercan, Serkan Tapkın, Furkan Küçük, Ali Demirtaş, Ahmet Özbayoğlu, Abdussamet Türker
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Abstract

Latest advancement of the computer vision literature and Convolutional Neural Networks (CNN) reveal many opportunities that are being actively used in various research areas. One of the most important examples for these areas is autonomous vehicles and mapping systems. Point of interest detection is a rising field within autonomous video tracking and autonomous mapping systems. Within the last few years, the number of implementations and research papers started rising due to the advancements in the new deep learning systems. In this paper, our aim is to survey the existing studies implemented on point of interest detection systems that focus on objects on the road (like lanes, road marks), or objects on the roadside (like road signs, restaurants or temporary establishments) so that they can be used for autonomous vehicles and automatic mapping systems. Meanwhile, the roadside point of interest detection problem has been addressed from a transportation industry perspective. At the same time, a deep learning based point of interest detection model based on roadside gas station identification will be introduced as proof of the anticipated concept. Instead of using an internet connection for point of interest retrieval, the proposed model has the capability to work offline for more robustness. A variety of models have been analysed and their detection speed and accuracy performances are compared. Our preliminary results show that it is possible to develop a model achieving a satisfactory real-time performance that can be embedded into autonomous cars such that streaming video analysis and point of interest detection might be achievable in actual utilisation for future implementations.
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基于计算智能的视频监控兴趣点检测
计算机视觉文献和卷积神经网络(CNN)的最新进展揭示了许多正在积极应用于各个研究领域的机会。这些领域最重要的例子之一是自动驾驶汽车和地图系统。兴趣点检测是自主视频跟踪和自主测绘系统中的一个新兴领域。在过去的几年里,由于新的深度学习系统的进步,实现和研究论文的数量开始上升。在本文中,我们的目标是调查现有的兴趣点检测系统的研究,这些系统主要关注道路上的物体(如车道、道路标志)或路边的物体(如道路标志、餐馆或临时场所),以便它们可以用于自动驾驶汽车和自动测绘系统。同时,从交通行业的角度解决了路边兴趣点检测问题。同时,将引入基于路边加油站识别的基于深度学习的兴趣点检测模型,作为预期概念的证明。与使用互联网连接进行兴趣点检索不同,所提出的模型具有离线工作的能力,具有更强的鲁棒性。对各种模型进行了分析,并对其检测速度和精度性能进行了比较。我们的初步结果表明,有可能开发出一种模型,实现令人满意的实时性能,可以嵌入到自动驾驶汽车中,这样流媒体视频分析和兴趣点检测就可以在未来的实际应用中实现。
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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