基于改进Resnet的地底水检测技术

Ruijie Hao, Siyi Xia, Youbin Fang, Taiyu Yan
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引用次数: 0

摘要

随着人工智能的快速发展和人口老龄化的到来,对智能服务机器人的需求日益增加。老年人和盲人由于视力不佳而容易滑倒,特别是当他们看不到室内地板上的水时。我们使用计算机视觉技术来解决这个问题。然而,由于其形状和大小的不确定性,使用现有的目标检测算法检测地底水是具有挑战性的。本文提出了一种基于改进的Resnet的地板水检测技术,该技术可以部署在智能服务机器人上,当服务机器人检测到地面有水时,提醒老人和盲人注意安全。我们提出的主题和方法可以显著降低老年人和盲人的滑倒概率。本文提出的方法比原来的Resnet18高3.6%,比Mobilenetv2高8.1%;我们的方法中参数的数量仅为VGG16_bn的8.5%,但达到了与VGG16_bn相似的性能。本文提出了一种通过检测地板上的水来实现智能服务机器人的新轨迹,并在准确性和速度上证明了有希望的结果。希望本文能引起更多学者对底板水检测技术的关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Floor Water Detection Technology Based on Improved Resnet
With the rapid development of artificial intelligence and the arrival of an aging population, the need for intelligent service robots is increasing. Older adults and the blind are susceptible to slipping due to weak vision, especially when they cannot see water on indoor floors. We use computer vision technology to solve this problem. However, it is challenging to detect floor water using existing target detection algorithms due to uncertainty about its shape and size. This paper proposes a floor water detection technology based on improved Resnet, which can be deployed on the intelligent service robot to remind the elderly and the blind to be careful When the service robot detects water in the ground. Our proposed topics and methods can significantly reduce the probability of the elderly and blind people slipping. The method proposed in this paper is 3.6% higher than the original Resnet18 and 8.1% higher than Mobilenetv2; the number of parameters in our method is only 8.5 percent of VGG16_bn and yet achieves similar performance to VGG16_bn. This paper suggests a new trajectory for intelligent service robots by detecting water on the floor, and it has demonstrated promising results in accuracy and speed. It is hoped that this paper will arouse more scholars’ interest in the detection technology of floor water.
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