Identifying the Source of Water on Plant Using the Leaf Wetness Sensor and via Deep Learning Based Ensemble Method

Riya Saini, Pooja Garg, Naveen Kumar Chaudhary, Manjunath V. Joshi,Vinay S Palaparthy,Ahlad Kumar

IEEE Sensors Journal(2024)

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摘要
Plant disease detection and management is one of the pivotal areas in the agriculture sector, which needs attention to abate the crop loss. The recent trends in machine learning and deep learning have played a significant role to reduce the crop loss with the help of early plant disease detection. For the plant disease detection prior information of soil moisture, ambient temperature, relative humidity, leaf wetness (LWS), rainfall are crucial parameters. In this work, the objective is to identify the source of leaf wetness on leaf canopy, which can arise due to irrigation, rainfall or dew. To identify the source of wetness on the leaf canopy, either rainfall or humidity/mist sensors are used, which substantially increase the cost of the system. For this purpose, we have used the LWS, which is deployed in the field and various patterns for the irrigation, rainfall or dew has been analysed by using the in-house developed IoT-enabled sensor system. The data collected from the field is used as a learning dataset for the proposed ensemble neural network developed to identify the source of leaf wetness. Short-Time Fourier Transform (STFT) has been employed to enhance data representation by transforming numerical data from the LWS into informative images. The provided ensemble model incorporates CNN and MLP, which process image and numerical data (ambient temperature, relative humidity, leaf wetness duration and maximum magnitude of frequency of images) as input. Their outputs combined in an ANN sub-model for precise leaf wetness event detection ( dew , rainfall or irrigation ). The proposed model achieved an accuracy of 96.13% with average precision, recall, and F1 score for the leaf wetness events is about 84%, 85%, and 83%, respectively.
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关键词
Leaf wetness sensor,Plant diseases,Ensemble networks,Convolutional neural network (CNN)
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