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Feasibility Study on a Portable Field Pest Classification System Design Based on DSP and 3G Wireless Communication Technology

机译:基于DSP和3G无线通信技术的便携式害虫分类系统设计的可行性研究。

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摘要

This paper presents a feasibility study on a real-time in field pest classification system design based on Blackfin DSP and 3G wireless communication technology. This prototype system is composed of remote on-line classification platform (ROCP), which uses a digital signal processor (DSP) as a core CPU, and a host control platform (HCP). The ROCP is in charge of acquiring the pest image, extracting image features and detecting the class of pest using an Artificial Neural Network (ANN) classifier. It sends the image data, which is encoded using JPEG 2000 in DSP, to the HCP through the 3G network at the same time for further identification. The image transmission and communication are accomplished using 3G technology. Our system transmits the data via a commercial base station. The system can work properly based on the effective coverage of base stations, no matter the distance from the ROCP to the HCP. In the HCP, the image data is decoded and the pest image displayed in real-time for further identification. Authentication and performance tests of the prototype system were conducted. The authentication test showed that the image data were transmitted correctly. Based on the performance test results on six classes of pests, the average accuracy is 82%. Considering the different live pests’ pose and different field lighting conditions, the result is satisfactory. The proposed technique is well suited for implementation in field pest classification on-line for precision agriculture.
机译:本文提出了一种基于Blackfin DSP和3G无线通信技术的实时田间病虫害分类系统设计的可行性研究。该原型系统由使用数字信号处理器(DSP)作为核心CPU的远程在线分类平台(ROCP)和主机控制平台(HCP)组成。 ROCP负责使用人工神经网络(ANN)分类器获取害虫图像,提取图像特征并检测害虫类别。它将通过DSP在JPEG 2000中编码的图像数据同时通过3G网络发送到HCP,以进行进一步标识。图像传输和通信使用3G技术完成。我们的系统通过商业基站传输数据。无论从ROCP到HCP的距离如何,该系统都可以根据基站的有效覆盖范围正常工作。在HCP中,对图像数据进行解码,并实时显示有害生物图像,以进一步识别。进行了原型系统的认证和性能测试。认证测试表明图像数据已正确传输。根据对六种有害生物的性能测试结果,平均准确度为82%。考虑到不同的活虫姿势和不同的野外光照条件,结果令人满意。所提出的技术非常适合用于精确农业在线田间害虫分类的实施。

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