adi9-48/ecg_classification_model
https://huggingface.co/adi9-48/ecg_classification_modelThis deep learning model is designed for ECG image classification, fine-tuned using ResNet-50. It can classify ECG images into different categories to assist in heart disease detection.
Sourced from
- HuggingFace — adi9-48/ecg_classification_model
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