Step 1. Place the generated file in directory vh.[name]/raw/. Make sure the frame count exceeds [n_train] set in config.py. Each frame should contain one frame_id.json and [n_cameras] of frame_id-camera_id-point_cloud.exr and [n_cameras] of frame_id-camera_id-rgb.png.
Step 2. Convert to dataset. The first [n_train] frames are used for training and the rest for evaluation.
python vh.py [name]train.pth and eval.pth will be generated and saved in vh.[name]/.
python train.py [name]Specify the frame id [eval_id] for evaluation.
python test.py [name] [eval_id]pip install flask flask-compressprepare locally
python localize.py [name]or download the chunks here, then extract it to vh.[name]/chunks.
python app.py [name]