基于更快R-CNN的移动机器人无线传感器网络优化导航

S. Alagumuthukrishnan, P. Karthikeyan, S. Velliangiri, R. M
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引用次数: 0

摘要

近年来,深度学习技术极大地增强了移动机器人的传感、导航和推理能力。近年来,由于机器视觉技术和算法的进步,视觉传感器在移动机器人应用中变得越来越重要。然而,由于当前神经网络拓扑结构的计算效率较低,对机器人实验要求的适应性有限,因此在实际机器人上实现这些技术仍然存在差距。值得注意的是,人工智能技术正被用于解决移动机器人中的一些困难,这些困难是基于使用视觉作为唯一的信息来源,或者使用激光或GPS等附加传感器。在过去的几年里,已经提出了许多工作,导致了广泛的方法。他们正在建立一个可靠的环境模型,计算模型内的位置,并管理机器人从一个位置移动到另一个位置。提出的方法的目标是使用优化的更快的R-CNN来检测智能家居和办公室中的物体,并提高不同数据集的准确性。该方法采用了一种基于更快R-CNN网络的新型聚类技术,这是一种检测具有连续相似性的测量组的新有效方法。通过这种聚类分层聚类算法,将得到的群体与机器人距离估计给出的度量信息相结合。该方法对ROI层进行优化,生成最优特征。该方法在室内和室外数据集上进行了测试,生成了有助于语义定位的拓扑地图。我们表明,当机器人返回到同一区域时,系统成功地对地点进行了分类,尽管可能存在照明变化。与VGG-19和RCNN方法相比,该方法具有较好的精度。研究结果是积极的,表明即使在不同的光照环境下,通过充分设计一个区域的语义地图,也可以实现准确的分类。在三种被评估的模型中,Faster R-CNN模型的错误率最低。
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Optimized Navigation of Mobile Robots Based on Faster R-CNN in Wireless Sensor Network
In recent years, deep learning techniques have dramatically enhanced mobile robot sensing, navigation, and reasoning. Due to the advancements in machine vision technology and algorithms, visual sensors have become increasingly crucial in mobile robot applications in recent years. However, due to the low computing efficiency of current neural network topologies and their limited adaptability to the requirements of robotic experimentation, there will still be gaps in implementing these techniques on real robots. It is worth noting that AI technologies are being used to solve several difficulties in mobile robotics based on using visuals as the sole source of information or with additional sensors like lasers or GPS. Over the last few years, many works have already been proposed, resulting in a wide range of methods. They were building a reliable model of the environment, calculating the position inside the model, and managing the robot's mobility from one location to another. The objective of the proposed method is to detect an object in the smart home and office using optimized faster R-CNN and improve accuracy for different datasets. The proposed methodology uses a novel clustering technique based on faster R-CNN networks, a new and effective method for detecting groups of measurements with a continuous similarity. Through such an agglomerative hierarchical clustering algorithm, the resulting communities are coupled with the metric information given by the robot's distance estimation.The proposed method optimize ROI lyaers for the generating the optimized features. The proposed approach is tested on indoor and outdoor datasets, producing topological maps that aid semantic location. We show that the system successfully categorizes places when the robot returns to the same area, despite potential lighting variations.The developed method provides the good accuracy than VGG-19 and RCNN methods. The findings were positive, indicating that accurate categorization can be accomplished even under varying illumination circumstances by adequately designing an area's semantic map. The Faster R-CNN model shows the lowest error rate among the three evaluated models.
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来源期刊
International Journal of Sensors, Wireless Communications and Control
International Journal of Sensors, Wireless Communications and Control Engineering-Electrical and Electronic Engineering
CiteScore
2.20
自引率
0.00%
发文量
53
期刊介绍: International Journal of Sensors, Wireless Communications and Control publishes timely research articles, full-length/ mini reviews and communications on these three strongly related areas, with emphasis on networked control systems whose sensors are interconnected via wireless communication networks. The emergence of high speed wireless network technologies allows a cluster of devices to be linked together economically to form a distributed system. Wireless communication is playing an increasingly important role in such distributed systems. Transmitting sensor measurements and control commands over wireless links allows rapid deployment, flexible installation, fully mobile operation and prevents the cable wear and tear problem in industrial automation, healthcare and environmental assessment. Wireless networked systems has raised and continues to raise fundamental challenges in the fields of science, engineering and industrial applications, hence, more new modelling techniques, problem formulations and solutions are required.
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