import subprocess import pytest from facefusion import face_classifier, face_detector, face_landmarker, face_recognizer, state_manager from facefusion.download import conditional_download from facefusion.face_analyser import get_many_faces, get_one_face from facefusion.typing import Face from facefusion.vision import read_static_image from .helper import get_test_example_file, get_test_examples_directory @pytest.fixture(scope = 'module', autouse = True) def before_all() -> None: conditional_download(get_test_examples_directory(), [ 'https://github.com/facefusion/facefusion-assets/releases/download/examples-3.0.0/source.jpg' ]) subprocess.run([ 'ffmpeg', '-i', get_test_example_file('source.jpg'), '-vf', 'crop=iw*0.8:ih*0.8', get_test_example_file('source-80crop.jpg') ]) subprocess.run([ 'ffmpeg', '-i', get_test_example_file('source.jpg'), '-vf', 'crop=iw*0.7:ih*0.7', get_test_example_file('source-70crop.jpg') ]) subprocess.run([ 'ffmpeg', '-i', get_test_example_file('source.jpg'), '-vf', 'crop=iw*0.6:ih*0.6', get_test_example_file('source-60crop.jpg') ]) state_manager.init_item('execution_device_id', 0) state_manager.init_item('execution_providers', [ 'cpu' ]) state_manager.init_item('face_detector_angles', [ 0 ]) state_manager.init_item('face_detector_model', 'many') state_manager.init_item('face_detector_score', 0.5) state_manager.init_item('face_landmarker_model', 'many') state_manager.init_item('face_landmarker_score', 0.5) face_classifier.pre_check() face_landmarker.pre_check() face_recognizer.pre_check() @pytest.fixture(autouse = True) def before_each() -> None: face_classifier.clear_inference_pool() face_detector.clear_inference_pool() face_landmarker.clear_inference_pool() face_recognizer.clear_inference_pool() def test_get_one_face_with_retinaface() -> None: state_manager.init_item('face_detector_model', 'retinaface') state_manager.init_item('face_detector_size', '320x320') face_detector.pre_check() source_paths =\ [ get_test_example_file('source.jpg'), get_test_example_file('source-80crop.jpg'), get_test_example_file('source-70crop.jpg'), get_test_example_file('source-60crop.jpg') ] for source_path in source_paths: source_frame = read_static_image(source_path) many_faces = get_many_faces([ source_frame ]) face = get_one_face(many_faces) assert isinstance(face, Face) def test_get_one_face_with_scrfd() -> None: state_manager.init_item('face_detector_model', 'scrfd') state_manager.init_item('face_detector_size', '640x640') face_detector.pre_check() source_paths =\ [ get_test_example_file('source.jpg'), get_test_example_file('source-80crop.jpg'), get_test_example_file('source-70crop.jpg'), get_test_example_file('source-60crop.jpg') ] for source_path in source_paths: source_frame = read_static_image(source_path) many_faces = get_many_faces([ source_frame ]) face = get_one_face(many_faces) assert isinstance(face, Face) def test_get_one_face_with_yoloface() -> None: state_manager.init_item('face_detector_model', 'yoloface') state_manager.init_item('face_detector_size', '640x640') face_detector.pre_check() source_paths =\ [ get_test_example_file('source.jpg'), get_test_example_file('source-80crop.jpg'), get_test_example_file('source-70crop.jpg'), get_test_example_file('source-60crop.jpg') ] for source_path in source_paths: source_frame = read_static_image(source_path) many_faces = get_many_faces([ source_frame ]) face = get_one_face(many_faces) assert isinstance(face, Face) def test_get_many_faces() -> None: source_path = get_test_example_file('source.jpg') source_frame = read_static_image(source_path) many_faces = get_many_faces([ source_frame, source_frame, source_frame ]) assert isinstance(many_faces[0], Face) assert isinstance(many_faces[1], Face) assert isinstance(many_faces[2], Face)