# AUTOGENERATED! DO NOT EDIT! File to edit: photo-checker.ipynb. # %% auto 0 __all__ = ['learn', 'labels', 'iface', 'classify_image'] # %% photo-checker.ipynb 5 from fastai.vision.all import * # %% photo-checker.ipynb 36 learn = load_learner('photos.pkl') # %% photo-checker.ipynb 58 labels = learn.dls.vocab # %% photo-checker.ipynb 60 def classify_image(img): img = PILImage.create(img) pred,idx,probs = learn.predict(img) return dict(zip(labels, map(float, probs))) # %% photo-checker.ipynb 61 import gradio as gr iface = gr.Interface( title = "Photo Checker", description = """This project checks which of our family photos are "good" or "bad". We have nearly 80,000 photos, so it's not practical to sort them out by hand. I want to exclude screenshots, photos of computer screens, photos of papers, images with lots of text, and very blurry images. I used this to separate the good photos to use for a random slide show on our TV. The trained model achieves around 99% accuracy on the validation set.""", fn = classify_image, inputs = gr.inputs.Image(shape = (512,512)), outputs = gr.outputs.Label(num_top_classes = 3), examples = list(map(str, get_image_files('eg'))), interpretation='default', enable_queue=True, ) iface.launch()