基于计算机人工智能技术的图像识别系统研究

Zhihua Xu
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引用次数: 0

摘要

本文采用移动网络模式,基于 Ubuntu16.04 和 CUDA9.0 开发 Python 爬虫并为其建模。该模式的可视化是通过 Tensor Board 软件实现的。系统的硬件设计包括三个模块:线性阵列 CCD 传感器、DSP 处理器和信号处理电路。通过对这些模型的重建和学习,存储训练好的模型,从而获得更高精度的图像识别。提出了一种利用傅立叶描述算子对物体进行分类的方法。实验结果表明,图像识别的准确率为 96.8%,识别时间为 0.55 秒。运动跟踪是基于定位和捕捉人手在每个画面中的具体位置,捕捉帧率为每秒 28 帧。系统能以每秒 5 张照片的速度快速获取 1024*1500 像素的图像。通过对姿势的静态识别和运动轨迹的跟踪,可以更好地实现人机交互。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Image Recognition System Based on Computer Artificial Intelligence Technology
This paper uses mobile network mode to develop and model Python crawler based on Ubuntu16.04 and CUDA9.0. The visualization of this pattern was achieved using Tensor Board software. The hardware design of the system consists of three modules: linear array CCD sensor, DSP processor and signal processing circuit. Through the reconstruction and learning of such models, the trained models are stored, so as to obtain higher precision image recognition. A method of classifying objects using Fourier description operators is proposed. The experimental results show that the accuracy of the image is 96.8% and the recognition time is 0.55 seconds. Motion tracking is based on the positioning and capture of the specific position of the human hand in each screen, and the captured frame rate is 28 frames per second. The system can quickly acquire images of 1024*1500 pixels at a rate of 5 photos/second. Through the static identification of posture and tracking of motion trajectory, the interaction between human and machine is better.
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