--- license: apache-2.0 tags: - vision - image-classification --- # Surgicare > Surgicare (Surgical + Care) SurgiCare is an AI system designed to support post-surgery patient recovery. In this repository, we focus on a wound classification model trained on an open-source dataset. Our objective is to improve the accuracy of wound detection and guide patients in managing their wound recovery efficiently. - **Online Demo**: [https://surgicare-demo.streamlit.app/](https://surgicare-demo.streamlit.app/) - Wound dataset: [https://www.kaggle.com/datasets/ibrahimfateen/wound-classification](https://www.kaggle.com/datasets/ibrahimfateen/wound-classification)) - Github Repo: [https://github.com/PogusTheWhisper/SurgiCare.git](https://github.com/PogusTheWhisper/SurgiCare.git) - Pretrained Models: * Surgicare-V1-best: [https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-best.keras](https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-best.keras) * Surgicare-V1-fast: [https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-fast-best.keras](https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-fast-best.keras) * Surgicare-V1-mini: [https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-mini-best-model.keras](https://huggingface.co./PogusTheWhisper/SurgiCare/resolve/main/SurgiCare-V1-mini-best-model.keras) ## Result of training!! ### Efficientnet B3 * Accuracy: 0.9062 Approximately 11 seconds per image. * I used EfficientNet-B3 to train for 25 epochs, monitoring the validation loss. ![alt text](https://raw.githubusercontent.com/PogusTheWhisper/SurgiCare/main/wound_classify_train/SurgiCare-V1-best.png) ### MobileNetV3Large * Accuracy: 0.7969 Approximately 5 seconds per image. * I used MobileNetV3Large to train for 50 epochs, monitoring the validation loss. ![alt text](https://raw.githubusercontent.com/PogusTheWhisper/SurgiCare/main/wound_classify_train/SurgiCare-V1-fast.png) ### MobileNetV3Small * Accuracy: 0.7812 Approximately 4 seconds per image. * I used MobileNetV3Small to train for 50 epochs, monitoring the validation loss. ![alt text](https://raw.githubusercontent.com/PogusTheWhisper/SurgiCare/main/wound_classify_train/SurgiCare-V1-mini.png)