Realtime object detection in IoT (Internet of Things) devices

E. Aribas, Evren Daglarli
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引用次数: 4

Abstract

IoT (Internet of Things) is acommunication network that connects physical or things to each other or with a group all together. The use is widely popular nowadays and its usage has expanded into interesting subjects. Especially, it is getting more popular to research in cross subjects such as mixing smart systems with computer sciences and engineering applications together. Object detection is one of these subjects. Realtime object detection is one of the foremost interesting subjects because of its compute costs. Gaps in methodology, unknown concepts and insufficiency in mathematical modeling makes it harder for designing these computing algorithms. Algortihms in these applications can be developed with in machine learning and/or numerical methods that are available in scientific literature. These operations are possible only if communication of objects within theirselves in physical space and awareness of the objects nearby. Artificial Neural Networks may help in these studies. In this study, yolo algorithm which is seen as a key element for real-time object detection in IoT is researched. It is realized and shown in results that optimization of computing and analyzation of system aside this research which takes Yolo algorithm as a foundation point [10]. As a result, it is seen that our model approach has an interesting potential and novelty.
IoT(物联网)设备中的实时对象检测
物联网(Internet of Things)是一种将物理或事物相互连接或与一组连接在一起的通信网络。这个用法现在很流行,它的用法已经扩展到有趣的话题中。特别是将智能系统与计算机科学、工程应用等交叉学科相结合的研究越来越受到人们的欢迎。目标检测就是其中一门学科。由于实时目标检测的计算成本高,因此它一直是人们最感兴趣的课题之一。方法上的空白、概念的未知和数学建模的不完善使得这些计算算法的设计更加困难。这些应用中的算法可以使用科学文献中提供的机器学习和/或数值方法来开发。这些操作只有在物理空间中的物体内部通信和对附近物体的感知时才有可能。人工神经网络可能有助于这些研究。在本研究中,yolo算法被视为物联网中实时目标检测的关键要素。除了本研究以Yolo算法为基点外,还实现了系统的优化计算和分析[10]。由此可见,我们的模型方法具有有趣的潜力和新颖性。
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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