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Designed to support the development of Computer Vision algorithms, this dataset aids in the rapid and accurate diagnosis of malaria, particularly in low-resource environments. It complements existing malaria microscopy datasets and can be leveraged to enhance machine learning models for improved detection, helping expand diagnostic capabilities in diverse regions, including Uganda and other malaria-endemic areas.
Key Features:
- Up to 40 Images per Slide: Multiple images per slide for thorough analysis.
- Metadata Included: Slide details, stage micrometer readings, and lens settings.
- Field of View (FOV): High-quality images for enhanced diagnostic precision.
- Ideal for Machine Learning: Optimized for training and improving malaria detection models.
This dataset is sourced from Kaggle.