Sri Lankan Tea Leaf Dataset
Description
This dataset comprises tea leaf images collected from various Sri Lankan tea estates, specifically curated for automated disease recognition. It consists of 1,791 raw images alongside an offline-augmented version totaling 5,968 images, distributed across six distinct categories: algal leaf spot, black blight, blister blight, gray blight, spider mites, and healthy leaves. The raw images capture natural visual variability under field acquisition conditions, incorporating diverse backgrounds, fluctuating illumination, varying leaf poses, symptom severity levels, and distinct growth stages. To mitigate class imbalance and enhance visual diversity for robust machine-learning model training, class-wise offline augmentation techniques were systematically applied to generate the expanded dataset. Format: JPG Resolution: raw image - 1024 x 1024 pixel augmented image - 512 x 512 pixel Category Distribution: Algal_leaf_spot: raw=417 augmented=1240 Black_blight: raw=345 augmented=966 Blister_blight: raw=126 augmented=757 Gray_blight: raw=431 augmented=1245 Healthy: raw=334 augmented=972 Key Features The dataset provides a region-specific image resource for tea leaf disease recognition. It includes multiple disease categories with visually diverse symptoms, such as lesion colour variation, texture differences, margin irregularity, and disease spread patterns. The augmented version expands the original dataset using lesion-preserving transformations, including rotation, flipping, scaling, brightness adjustment, and related image transformations, while maintaining disease-relevant visual characteristics. Purpose This dataset is intended to support the development and evaluation of machine-learning and deep-learning models for tea leaf disease classification. It can be used for automated disease recognition, lightweight model benchmarking, data augmentation studies, transfer learning, and mobile-assisted crop health monitoring. The dataset may help researchers and agricultural practitioners develop early screening tools for tea leaf diseases and support more timely disease management in tea cultivation.