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“…First, as can be seen from Fig. 8, the Squeeze operation uses Global Average Pooling to compress each channel feature map to obtain global feature information, and the final length is a vector of C. The process of Squeeze is shown in formula (7).…”
Section: Attention Mechanismmentioning
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“…First, as can be seen from Fig. 8, the Squeeze operation uses Global Average Pooling to compress each channel feature map to obtain global feature information, and the final length is a vector of C. The process of Squeeze is shown in formula (7).…”
Section: Attention Mechanismmentioning
“…The image recognition classification of traditional machine learning methods is divided into the following steps: data analysis and preprocessing, classification after edge feature extraction [6]. Kurmi et al [7] preprocessed the image to obtain the contour information of the leaf and remove the background to avoid its interference, which can maximize the extraction of leaf disease information for classification. Rumpf et al [8] used support vector machines and hyperspectral reflectance for automatic identification of plant diseases.…”
Section: Introductionmentioning
“…The harm degree of wormholes was evaluated to provide a reference for precise spraying of pesticides. Kurmi and Gangwar (2021) proposed a Leaf Image Localization-Based Algorithm for Different Crops Disease Classification.…”
Section: Introductionmentioning
“…That leads to improvisation in accuracy compared to the traditional methods (4). Image segmentation and the super pixel cluster method are employed to increase the convergence speed of plant leaf disease detection, but due to practical value and the bi-class pixel cut method, the absolute spotting is not matched (5).T he authors used image localization and classification techniques to reduce the amount of monitoring work in big farms of crops, and the result was achieved by disease symptom detection with an accuracy of 70% only (6). An Androidbased app is developed by using deep learning methods to detect plant leaf disease in real time by taking a photograph and checking if the leaf is sick or not, but the method fails to detect sickness at an early stage to stop the degradation of plants.…”
Section: Introductionmentioning