Weed Detection in Farm Crops using Parallel Image Processing

S. Umamaheswari, R. Arjun, D. Meganathan
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引用次数: 21

Abstract

Human community are educated about the environmental issues of pesticides and fertilizers used in agriculture. There is a ever-growing demand for food to be met by agriculture producers. To reduce the environmental issues and address food security, IoT based precision agriculture has evolved. Precision agriculture not only reduces cost and waste, but also improves productivity and quality. We propose a system to detect and locate the weed plants among the cultivated farm crops based on the captured images of the farm. We also propose to enhance the performance of the above system using parallel processing in GPU such that it can be used in real-time. The proposed system takes real time image of farm as input for classification and detects the type and the location of weed in the image. The proposed work trains the system with images of crops and weeds under deep learning framework which includes feature extraction and classification. The results can be used by automated weed detection system under tasks in precision agriculture.
基于并行图像处理的农作物杂草检测
人类社区受到教育,了解农业中使用的农药和化肥的环境问题。农业生产者对粮食的需求不断增长。为了减少环境问题和解决粮食安全问题,基于物联网的精准农业已经发展起来。精准农业不仅降低了成本和浪费,而且提高了生产率和质量。本文提出了一种基于农田采集图像的农田杂草检测与定位系统。我们还建议在GPU中使用并行处理来提高上述系统的性能,使其能够实时使用。该系统以农田实时图像作为分类输入,检测图像中杂草的种类和位置。在深度学习框架下,利用农作物和杂草图像对系统进行训练,包括特征提取和分类。研究结果可用于精准农业任务下的杂草自动检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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