import pathlib import torch from torch.utils.data import DataLoader import pathlib from vfi_utils import load_file_from_github_release, preprocess_frames, postprocess_frames import typing from comfy.model_management import get_torch_device from vfi_utils import InterpolationStateList, generic_frame_loop MODEL_TYPE = pathlib.Path(__file__).parent.name CKPT_NAMES = ["M2M.pth"] class M2M_VFI: @classmethod def INPUT_TYPES(s): return { "required": { "ckpt_name": (CKPT_NAMES, ), "frames": ("IMAGE", ), "clear_cache_after_n_frames": ("INT", {"default": 10, "min": 1, "max": 1000}), "multiplier": ("INT", {"default": 2, "min": 2, "max": 1000}), }, "optional": { "optional_interpolation_states": ("INTERPOLATION_STATES", ) } } RETURN_TYPES = ("IMAGE", ) FUNCTION = "vfi" CATEGORY = "ComfyUI-Frame-Interpolation/VFI" def vfi( self, ckpt_name: typing.AnyStr, frames: torch.Tensor, clear_cache_after_n_frames: typing.SupportsInt = 1, multiplier: typing.SupportsInt = 2, optional_interpolation_states: InterpolationStateList = None, **kwargs ): from .M2M_arch import M2M_PWC model_path = load_file_from_github_release(MODEL_TYPE, ckpt_name) interpolation_model = M2M_PWC() interpolation_model.load_state_dict(torch.load(model_path)) interpolation_model.eval().to(get_torch_device()) frames = preprocess_frames(frames) def return_middle_frame(frame_0, frame_1, int_timestep, model): tenSteps = [ torch.FloatTensor([int_timestep] * len(frame_0)).view(len(frame_0), 1, 1, 1).to(get_torch_device()) ] return model(frame_0, frame_1, tenSteps)[0] args = [interpolation_model] out = postprocess_frames( generic_frame_loop(type(self).__name__, frames, clear_cache_after_n_frames, multiplier, return_middle_frame, *args, interpolation_states=optional_interpolation_states, dtype=torch.float32) ) return (out,)