外文摘要:Plant diseases are rising nowadays. Plant diseases lead to high economic losses. Internet of Things (IoT) technology has found its application in various sectors. This led to the introduction of smart farming, in which IoT has been utilized to help identify the exact spot of the diseased affected region on the leaf from the vast farmland in a well-organized and automated manner. Thus, the main focus of this task is the introduction of a novel plant disease detection model that relies on IoT technology. The collected images are given to the Image Transmission phase. Here, the encryption task is performed by employing the Advanced Encryption Standard (AES) and also the decrypted plant images are fed to the pre-processing stage. The Mask Regions with Convolutional Neural Networks (R-CNN) are used to segment the pre-processed images. Then, the segmented images are given to the detection phase in which the Adaptive Dense Hybrid Convolution Network with Attention Mechanism (ADHCN-AM) approach is utilized to perform the detection of plant disease. From the ADHCN-AM, the final detected plant disease outcomes are obtained. Throughout the entire validation, the offered model shows 95% enhancement in terms of MCC showcasing its effectiveness over the existing approaches.
外文关键词:Internet of Things;Plant disease detection;Parameter optimization;Advanced Encryption Standard;modernized horse herd optimization;adaptive dense hybrid convolution network with attention mechanism;image segmentation using mask R-CNN;maximization of accuracy and precision
作者:Ananthi, N;Balaji, V;Mohana, M;Gnanapriya, S
作者单位:Easwari Engn Coll
期刊名称:NETWORK-COMPUTATION IN NEURAL SYSTEMS
期刊影响因子:0.0
出版年份:2024
出版刊次:
原文传递申请:江苏省科技资源(工程技术文献)统筹服务平台