基于Android和Tiny Yolo网络的构件识别应用及人工工具开发(以信号与系统实验室为例)

Dodon Yendri, Lathifah Arief, Desta Yolanda, Humaira, Fauzan Muhammad
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引用次数: 0

摘要

在实验室进行的实习活动通常配备有必须事先准备好的工具和部件。本研究旨在开发一种识别实验室工具和组件的应用程序。该应用程序是利用智能手机相机为android设备设计的,并使用Tiny YOLO开发。开发遵循使用瀑布模型的系统开发生命周期(SDLC)方法。然后利用Arduino、Raspberry Pi、HC-05传感器、Esp-32模块、万用表、示波器、Function Generator等实验室工具和组件,对谷歌获取的1666个图像对象进行训练数据测试。结果表明,该系统可以在25 ~ 35 cm的最佳距离内检测到部件和实验室工具,并且物体检测的精度受室内光照条件的影响。从测试的几个组件来看,Arduino Uno的目标检测准确率为73.33%,树莓派为82.5%,蓝牙HC-05模块为86.84%,Esp32模块为84.37%,万用表为80.6%,示波器为76.31%,函数发生器为80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Component Recognition Applications and Labor Tools Based on Android and Tiny Yolo Network (Case Study: Signal and System Laboratory)
Practicum activities in the laboratory usually equipped with tools and components that must be prepared in advance. This study aims to develop an application for recognizing laboratory tools and components. The application is designed for Android-baced devices by utilizing the smartphone camera and developed using Tiny YOLO. The development follows System Development Life Cycle (SDLC) methodology using waterfall model. The system then tested by training data on 1,666 image objects obtained from Google in the form of laboratory tools and components such as Arduino, Raspberry Pi, HC-05 sensor, Esp-32 Module, Multimeter, Oscilloscope, and Function Generator. The results showed that the system can detect components and laboratory tools at an optimal distance of 25-35 cm and the accuracy of object detection is influenced by the light conditions in the. From several components tested, the object detection accuracy rate for Arduino Uno is 73.33%, Raspberry Pi is 82.5%, Bluetooth HC-05 module is 86.84%, Esp32 module is 84.37%, Multimeter is 80.6%, Oscilloscope is 76.31% and 80% function generator.
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