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د. مجدل سلطان بن سفران

Associate Professor

أستاذ مشارك بقسم علوم الحاسب/المشرف على كرسي أبحاث الذكاء الاصطناعي في الحوار الالكتروني والتواصل الحضاري

علوم الحاسب والمعلومات
مبنى كلية الحاسب الآلي والمعلومات
publication
Journal Article
2024

A Robust and Light-Weight Transfer Learning-Based Architecture for Accurate Detection of Leaf Diseases Across Multiple Plants using Less Amount of Images

Leaf diseases are a global threat to crop production and food preservation. Detecting these diseases is crucial for effective management. We introduce LeafDoc-Net, a robust, lightweight transfer-learning architecture for accurately detecting leaf diseases across multiple plant species, even with limited image data. Our approach concatenates two pre-trained image classification deep learning-based models, DenseNet121 and MobileNetV2. We enhance DenseNet121 with an attention-based transition mechanism and global average pooling layers, while MobileNetV2 benefits from adding an attention module and global average pooling layers. We deepen the architecture with extra-dense layers featuring swish activation and batch normalization layers, resulting in a more robust and accurate model for diagnosing leaf-related plant diseases. LeafDoc-Net is evaluated on two distinct datasets, focused on cassava and …

more of publication
publications

Cloud computing has demonstrated its effectiveness in handling complex data that requires substantial computational power, immediate responsiveness, and ample storage capacity.

2024
publications

Leaf diseases are a global threat to crop production and food preservation. Detecting these diseases is crucial for effective management. We introduce LeafDoc-Net, a robust, lightweight transfer-…

2024