AI-powered detection of pumpkin leaf diseases using DualFusion-CBAM-stochastic for yield protection and precision agriculture
Ruchika Bhuria, Rahul Singh, Mudassir Khan, Mohamed Abbas, Jaibir Singh, Amel Ksibi, Nitin Kumar, Nitika Kapoor, Upinder Kaur

TL;DR
This paper introduces a deep-learning model for detecting pumpkin leaf diseases to improve precision agriculture and crop yield.
Contribution
A novel hybrid deep-learning framework, DualFusion–CBAM–Stochastic, is proposed for pumpkin leaf disease classification.
Findings
The model achieves 96% classification accuracy on a dataset of 2,000 pumpkin leaf images.
Dual-backbone fusion with attention and stochastic-depth regularization improves performance and stability.
The model outperforms existing CNN-based approaches in disease classification.
Abstract
Early and accurate detection of pumpkin leaf diseases is essential for precision agriculture; however, manual inspection remains slow, subjective, and difficult to scale in real field environments. To address these limitations, this study proposes a robust deep-learning framework for automated pumpkin leaf disease classification. This study introduces DualFusion–CBAM–Stochastic, a hybrid deep-learning architecture that integrates two complementary convolutional backbones: DenseNet121 for fine-grained texture representation through dense connectivity and EfficientNetB3 for multi-scale contextual feature extraction using compound scaling. Input images are preprocessed through resizing to 224 × 224 pixels, ImageNet-based normalization, and controlled data augmentation, including horizontal and vertical flips, rotation, and zoom. Feature refinement is achieved using the Convolutional Block…
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Taxonomy
TopicsSmart Agriculture and AI · Plant Disease Management Techniques · Irrigation Practices and Water Management
