使用卷积神经网络算法的基于物联网的智能农业监测系统

B. K S, Chinmaya Kumar Pradhan, Venkateswarlu A N, Harini G, Geetha P
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引用次数: 0

摘要

农业是地球上赖以生存的重要职业,因为它满足了大多数人的生活需要。然而,随着科技的发展和物联网的诞生,自动化(更智能的技术)开始取代旧的方法,从而使各个领域都得到了广泛的改善。目前,在自动化条件下,更新、更智能的技术每天都在升级,遍及智能家居、废物管理、汽车、工业、农业、健康、电网等各行各业。由于水牛、奶牛、山羊、大象等当地动物经常毁坏农作物,农民损失惨重。为了保护自己的田地,农民们使用动物陷阱或电网围栏。无数人和动物因此丧生。由于动物对农作物的严重危害,许多人放弃了耕作。目前使用的系统很难识别动物的种类。因此,通过采用基于人工智能的卷积神经网络方法,动物检测变得简单而有效。播放动物特定声音的概念是迄今为止最准确的执行方法。旋转摄像头也得到了很好的利用。通过这种技术检测到的动物比例从 55% 增长到 79%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An internet of things based smart agriculture monitoring system using convolution neural network algorithm
Farming is a crucial vocation for survival on this planet because it meets the majority of people's necessities to live. However, as technology developed and the Internet of Things was created, automation (smarter technologies) began to replace old approaches, leading to a broad improvement in all fields. Currently in an automated condition where newer, smarter technologies are being upgraded daily throughout a wide range of industries, including smart homes, waste management, automobiles, industries, farming, health, grids, and more. Farmers go through significant losses as a result of the regular crop destruction caused by local animals like buffaloes, cows, goats, elephants, and others. To protect their fields, farmers have been using animal traps or electric fences. Both animals and humans perish as a result of these countless deaths. Many individuals are giving up farming because of the serious harm that animals inflict on crops. The systems now in use make it challenging to identify the animal species. Consequently, animal detection is made simple and effective by employing the Artificial Intelligence based Convolution Neural Network method. The concept of playing animal-specific sounds is by far the most accurate execution. Rotating cameras are put to good use. The percentage of animals detected by this technique has grown from 55% to 79%.
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