{ "model_type": "densenet", "architecture": "densenet121", "num_classes": 3, "input_size": [224, 224], "in_channels": 3, "classifier_input_features": 1024, "framework": "pytorch", "task": "image-classification", "domain": "histopathology", "modality": "whole-slide-imaging", "license": "gpl-3.0", "tags": [ "histopathology", "tissue-detection", "whole-slide-imaging", "pathology", "medical-imaging", "densenet", "image-classification", "computational-pathology", "cancer-research" ], "preprocessing": { "resize": 224, "normalization": { "mean": [0.485, 0.456, 0.406], "std": [0.229, 0.224, 0.225] } }, "class_labels": { "0": "background", "1": "artifact", "2": "tissue" }, "recommended_threshold": { "class": 2, "probability": 0.8, "description": "Accept patches where class 2 (tissue) probability >= 0.8" }, "version": "1.0.0", "release_date": "2024", "authors": [ "Lab-Rasool", "Markowetz Lab (original training)" ], "huggingface_repo": "Lab-Rasool/tissue-detector", "related_frameworks": [ "HoneyBee" ] }