import os from inference.models.utils import get_roboflow_model from tqdm import tqdm import supervision as sv def main( source_video_path: str, target_video_path: str, roboflow_api_key: str, model_id: str = "yolov8x-1280", confidence_threshold: float = 0.3, iou_threshold: float = 0.7, ) -> None: """ Video Processing with Inference and ByteTrack. Args: source_video_path: Path to the source video file target_video_path: Path to the target video file (output) roboflow_api_key: Roboflow API key model_id: Roboflow model ID confidence_threshold: Confidence threshold for the model iou_threshold: IOU threshold for the model """ api_key = os.environ.get("ROBOFLOW_API_KEY", roboflow_api_key) if api_key is None: raise ValueError( "Roboflow API key is missing. Please provide it as an argument or set the " "ROBOFLOW_API_KEY environment variable." ) model = get_roboflow_model(model_id=model_id, api_key=api_key) tracker = sv.ByteTrack() box_annotator = sv.BoxAnnotator() label_annotator = sv.LabelAnnotator() frame_generator = sv.get_video_frames_generator(source_path=source_video_path) video_info = sv.VideoInfo.from_video_path(video_path=source_video_path) with sv.VideoSink(target_path=target_video_path, video_info=video_info) as sink: for frame in tqdm(frame_generator, total=video_info.total_frames): results = model.infer( frame, confidence=confidence_threshold, iou_threshold=iou_threshold )[0] detections = sv.Detections.from_inference(results) detections = tracker.update_with_detections(detections) annotated_frame = box_annotator.annotate( scene=frame.copy(), detections=detections ) annotated_labeled_frame = label_annotator.annotate( scene=annotated_frame, detections=detections ) sink.write_frame(frame=annotated_labeled_frame) if __name__ == "__main__": from jsonargparse import auto_cli, set_parsing_settings set_parsing_settings(parse_optionals_as_positionals=True) auto_cli(main, as_positional=False)