import gradio as gr import matplotlib.pyplot as plt from PIL import Image from ultralytics import YOLO import cv2 import numpy as np def image_preprocess(image): img_height, img_width = image.shape[0:2] image_converted = cv2.cvtColor(image, cv2.COLOR_BGR2RGB) ih, iw = [input_size, input_size] # [input_size, input_size] = [640, 640] h, w, _ = image.shape # [1944, 2592] scale = min(iw/w, ih/h) # min(0.2469, 0.3292) = 0.2469 nw, nh = int(scale * w), int(scale * h) # [640, 480] image_resized = cv2.resize(image_converted, (nw, nh)) image_padded = np.full(shape=[ih, iw, 3], fill_value=128.0) dw, dh = (iw - nw) // 2, (ih-nh) // 2 # [0, 80] image_padded[dh:nh+dh, dw:nw+dw, :] = image_resized # image_padded[80:256, 32:224] image_padded = image_padded / 255. # image_resized = image_resized / 255. image_padded = image_padded[np.newaxis, ...].astype(np.float32) image_padded = np.moveaxis(image_padded, -1, 1) return image_padded, img_width, img_height, image model = YOLO('best (1).pt') def response(image): res = Image.fromarray(image) im_rgb = model(res) # im_rgb = Image.fromarray(im_rgb) return np.array(im_rgb) iface = gr.Interface(fn=response, inputs="image", outputs="image") iface.launch()