Smart Farming with Sooty Tern Optimization based LS-HGNet Classification Model

V. G. Krishnan, B. Vikranth, M. Sumithra, B. P. Laxmi, B. S. Gowri
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Abstract

Smart farming technologies enable farmers to use resources like water, fertilizer and pesticides as efficiently as possible. This paper discusses how Unmanned Aerial Vehicle (UAV) pictures can be used to automatically detect and count tassels, thereby advancing the advancement of strategic maize planting. The real state of affairs in cornfields is complicated, though, and the current algorithms struggle to provide the speed and accuracy required for real-time detection. This research employed a sizable, excellent dataset of maize tassels to solve this problem. This paper suggests using the bottom-hat-top-hat preprocessing technique to address the lighting irregularities and noise in maize photos taken by drones. The Lightweight weight-stacked hourglass Network (LS-HGNet) model is suggested for classification. The hourglass network structure of LS-HGNet, which is mostly utilised as a backbone network, has allowed significant advancements in the discovery of maize tassels. In light of this, the current work suggests a lighter variant of the hourglass network that also enhances the accuracy of tassel detection in maize plants. The additional skip connections used in the new hourglass network architecture allow minimal changes to the number of network parameters while improving performance. Consequently, the suggested LS-HGNet classifier lowers the computational burden and increases the convolutional receptive field. The hyperparameter tuning process is then carried out using the Sooty Tern Optimisation Algorithm (STOA), which helps increase tassel detection accuracy. Numerous tests were conducted to verify that the suggested approach is more accurate at 98.7% and more efficient than the most advanced techniques currently in use.
基于 LS-HGNet 分类模型的烟灰燕鸥优化智能养殖
智能农业技术使农民能够尽可能高效地利用水、化肥和农药等资源。本文讨论了如何利用无人机(UAV)图片自动检测和计算穗数,从而推动玉米战略种植的发展。不过,玉米田的实际情况比较复杂,目前的算法难以提供实时检测所需的速度和准确性。本研究采用了一个相当大的优秀玉米穗数据集来解决这一问题。本文建议使用底帽-顶帽预处理技术来解决无人机拍摄的玉米照片中的光照不规则性和噪声问题。建议使用轻量级权重堆叠沙漏网络(LS-HGNet)模型进行分类。LS-HGNet 的沙漏网络结构主要用作骨干网络,在发现玉米穗方面取得了重大进展。有鉴于此,目前的研究提出了一种沙漏网络的轻型变体,也能提高玉米植株穗检测的准确性。新的沙漏网络结构中使用了额外的跳过连接,从而在提高性能的同时将网络参数数量的变化降至最低。因此,建议的 LS-HGNet 分类器减轻了计算负担,增加了卷积感受野。超参数调整过程采用了 Sooty Tern 优化算法 (STOA),有助于提高流苏检测的准确性。我们进行了大量测试,以验证所建议的方法比目前使用的最先进技术更准确(98.7%)、更高效。
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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