Spaces:
Runtime error
Runtime error
| import os | |
| os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2' | |
| os.environ['CUDA_VISIBLE_DEVICES'] = '0' | |
| import tensorflow as tf | |
| import tf_bodypix | |
| from tf_bodypix.api import download_model, load_model, BodyPixModelPaths | |
| from tf_bodypix.draw import draw_poses | |
| from tensorflow.keras import preprocessing | |
| import cv2 | |
| import json | |
| from matplotlib import pyplot as plt | |
| import numpy as np | |
| from calculations import measure_body_sizes | |
| bodypix_model = load_model(download_model(BodyPixModelPaths.MOBILENET_FLOAT_50_STRIDE_16)) | |
| input_path = 'input1/files/20' | |
| front_image = 'front_img.jpg' | |
| side_image = 'side_img.jpg' | |
| output_path = 'output' | |
| real_height_cm = 173.0 # Replace with the real height in cm | |
| rainbow = [ | |
| [110, 64, 170], [143, 61, 178], [178, 60, 178], [210, 62, 167], | |
| [238, 67, 149], [255, 78, 125], [255, 94, 99], [255, 115, 75], | |
| [255, 140, 56], [239, 167, 47], [217, 194, 49], [194, 219, 64], | |
| [175, 240, 91], [135, 245, 87], [96, 247, 96], [64, 243, 115], | |
| [40, 234, 141], [28, 219, 169], [26, 199, 194], [33, 176, 213], | |
| [47, 150, 224], [65, 125, 224], [84, 101, 214], [99, 81, 195] | |
| ] | |
| fimage = preprocessing.image.load_img(input_path+'/'+front_image) | |
| simage = preprocessing.image.load_img(input_path+'/'+side_image) | |
| # image converted to image array | |
| fimage_array = preprocessing.image.img_to_array(fimage) | |
| simage_array = preprocessing.image.img_to_array(simage) | |
| # bodypix prediction | |
| frontresult = bodypix_model.predict_single(fimage_array) | |
| sideresult = bodypix_model.predict_single(simage_array) | |
| front_mask = frontresult.get_mask(threshold=0.75) | |
| side_mask = sideresult.get_mask(threshold=0.75) | |
| preprocessing.image.save_img(f'{output_path}/frontbodypix-mask.jpg',front_mask) | |
| preprocessing.image.save_img(f'{output_path}/sidebodypix-mask.jpg',side_mask) | |
| front_colored_mask = frontresult.get_colored_part_mask(front_mask, rainbow) | |
| side_colored_mask = sideresult.get_colored_part_mask(side_mask, rainbow) | |
| print(front_colored_mask.shape) | |
| preprocessing.image.save_img(f'{output_path}/frontbodypix-colored-mask.jpg',front_colored_mask) | |
| preprocessing.image.save_img(f'{output_path}/sidebodypix-colored-mask.jpg',side_colored_mask) | |
| frontposes = frontresult.get_poses() | |
| front_image_with_poses = draw_poses( | |
| fimage_array.copy(), # create a copy to ensure we are not modifing the source image | |
| frontposes, | |
| keypoints_color=(255, 100, 100), | |
| skeleton_color=(100, 100, 255) | |
| ) | |
| sideposes = sideresult.get_poses() | |
| side_image_with_poses = draw_poses( | |
| simage_array.copy(), # create a copy to ensure we are not modifing the source image | |
| sideposes, | |
| keypoints_color=(255, 100, 100), | |
| skeleton_color=(100, 100, 255) | |
| ) | |
| print(np.array(simage).shape) | |
| print(np.array(side_colored_mask).shape) | |
| preprocessing.image.save_img(f'{output_path}/frontbodypix-poses.jpg', front_image_with_poses) | |
| preprocessing.image.save_img(f'{output_path}/sidebodypix-poses.jpg', side_image_with_poses) | |
| body_sizes = measure_body_sizes(side_colored_mask, front_colored_mask, sideposes, frontposes, real_height_cm, rainbow) | |
| print(body_sizes) | |
| print(np.shape(body_sizes)) | |
| print(type(body_sizes)) | |
| print(body_sizes[0]) | |
| import pandas as pd | |
| print(pd.DataFrame([body_sizes[0]])) | |
| file_name = "output/measurements.json" | |
| # Open the file in write mode and save the dictionary as JSON | |
| with open(file_name, 'w') as json_file: | |
| json.dump(body_sizes, json_file, indent=4) | |
| print(f"body_sizes saved to {output_path}") |