Spaces:
Runtime error
Runtime error
| import gradio as gr | |
| from fastai.vision.all import load_learner | |
| from fastai import * | |
| import torch | |
| import os | |
| from PIL import Image | |
| model_path = 'multi_target_resnet18.pkl' | |
| model = load_learner(model_path) | |
| def result(path): | |
| pred,_,probability = model.predict(path) | |
| arr = ['Name','Status','Disease Name'] | |
| vals = ['', '', ''] | |
| names = ['Maple', 'Banana', 'Cucumber', 'Mango', 'Maple', 'Pepper', 'Rose', 'Tomato'] | |
| status = ['diseased', 'no disease found'] | |
| for x in pred: | |
| if x in names: | |
| vals[0] = x.capitalize() | |
| elif x in status: | |
| vals[1] = x.capitalize() | |
| elif x == 'healthy': | |
| vals[2] = 'None' | |
| else: | |
| vals[2] = x.capitalize() | |
| return f'{arr[0]}:\t{vals[0]}\n{arr[1]}:\t{vals[1]}\n{arr[2]}:\t{vals[2]}\n' | |
| path = 'test-images/' | |
| image_path = [] | |
| for i in os.listdir(path): | |
| image_path.append(path+i) | |
| image = gr.components.Image(shape =(300,300)) | |
| label = gr.components.Label() | |
| iface = gr.Interface(fn=result, inputs=image, outputs='text', examples = image_path) | |
| iface.launch(inline = False) |