论文标题
远程无线电源传输系统的轻巧蒙版R-CNN
Lightweight Mask R-CNN for Long-Range Wireless Power Transfer Systems
论文作者
论文摘要
谐振光束充电(RBC)是一项无线充电技术,它支持在仪表级距离内进行多瓦特功率传输。安全性,移动性和同时充电能力的功能使RBC能够同时安全地为多个移动设备充电。为了检测需要充电的设备,在先前的工作中提出了基于掩模的基于R-CNN的Dection模型。但是,考虑到RBC系统的限制,在轻巧的硬件装置设备中涂上掩码R-CNN并不容易,因为它具有重型模型和庞大的计算。因此,我们提出了一种机器学习检测方法,该方法提供了基于传统面具R-CNN的更轻,更快的模型。提出的方法使对象检测更容易在移动设备上移植并减轻硬件计算的负担。通过调整骨干的结构和面膜R-CNN的头部,我们将平均检测时间从$ 1.02 \ mbox {s} $每图像降低到$ 0.6132 \ Mbox {s} $,并将型号大小从$ 245 \ mbox {mb} $降低到$ 47.1.1 \ mbox $ \ mbbox} $。改进的模型更适合RBC系统中的应用。
Resonant Beam Charging (RBC) is a wireless charging technology which supports multi-watt power transfer over meter-level distance. The features of safety, mobility and simultaneous charging capability enable RBC to charge multiple mobile devices safely at the same time. To detect the devices that need to be charged, a Mask R-CNN based dection model is proposed in previous work. However, considering the constraints of the RBC system, it's not easy to apply Mask R-CNN in lightweight hardware-embedded devices because of its heavy model and huge computation. Thus, we propose a machine learning detection approach which provides a lighter and faster model based on traditional Mask R-CNN. The proposed approach makes the object detection much easier to be transplanted on mobile devices and reduce the burden of hardware computation. By adjusting the structure of the backbone and the head part of Mask R-CNN, we reduce the average detection time from $1.02\mbox{s}$ per image to $0.6132\mbox{s}$, and reduce the model size from $245\mbox{MB}$ to $47.1\mbox{MB}$. The improved model is much more suitable for the application in the RBC system.