# coding: utf-8

"""
Pipeline for gradio
"""
import gradio as gr
from .config.argument_config import ArgumentConfig
from .live_portrait_pipeline import LivePortraitPipeline
from .utils.io import load_img_online
from .utils.rprint import rlog as log
from .utils.crop import prepare_paste_back, paste_back
# from .utils.camera import get_rotation_matrix

def update_args(args, user_args):
    """update the args according to user inputs
    """
    for k, v in user_args.items():
        if hasattr(args, k):
            setattr(args, k, v)
    return args

class GradioPipeline(LivePortraitPipeline):

    def __init__(self, inference_cfg, crop_cfg, args: ArgumentConfig):
        super().__init__(inference_cfg, crop_cfg)
        # self.live_portrait_wrapper = self.live_portrait_wrapper
        self.args = args

    def execute_video(
        self,
        input_image_path,
        input_video_path,
        flag_relative_input,
        flag_do_crop_input,
        flag_remap_input,
    ):
        """ for video driven potrait animation
        """
        if input_image_path is not None and input_video_path is not None:
            args_user = {
                'source_image': input_image_path,
                'driving_info': input_video_path,
                'flag_relative': flag_relative_input,
                'flag_do_crop': flag_do_crop_input,
                'flag_pasteback': flag_remap_input,
            }
            # update config from user input
            self.args = update_args(self.args, args_user)
            self.live_portrait_wrapper.update_config(self.args.__dict__)
            self.cropper.update_config(self.args.__dict__)
            # video driven animation
            video_path, video_path_concat = self.execute(self.args)
            # gr.Info("Run successfully!", duration=2)
            return video_path, video_path_concat,
        else:
            raise gr.Error("Please upload the source portrait and driving video 🤗🤗🤗", duration=5)

    def execute_image(self, input_eye_ratio: float, input_lip_ratio: float, input_image, flag_do_crop = True):
        """ for single image retargeting
        """
        # disposable feature
        f_s_user, x_s_user, source_lmk_user, crop_M_c2o, mask_ori, img_rgb = \
        self.prepare_retargeting(input_image, flag_do_crop)

        if input_eye_ratio is None or input_lip_ratio is None:
            raise gr.Error("Invalid ratio input 💥!", duration=5)
        else:
            x_s_user = x_s_user.to("cuda")
            f_s_user = f_s_user.to("cuda")
            # ∆_eyes,i = R_eyes(x_s; c_s,eyes, c_d,eyes,i)
            combined_eye_ratio_tensor = self.live_portrait_wrapper.calc_combined_eye_ratio([[input_eye_ratio]], source_lmk_user)
            eyes_delta = self.live_portrait_wrapper.retarget_eye(x_s_user, combined_eye_ratio_tensor)
            # ∆_lip,i = R_lip(x_s; c_s,lip, c_d,lip,i)
            combined_lip_ratio_tensor = self.live_portrait_wrapper.calc_combined_lip_ratio([[input_lip_ratio]], source_lmk_user)
            lip_delta = self.live_portrait_wrapper.retarget_lip(x_s_user, combined_lip_ratio_tensor)
            num_kp = x_s_user.shape[1]
            # default: use x_s
            x_d_new = x_s_user + eyes_delta.reshape(-1, num_kp, 3) + lip_delta.reshape(-1, num_kp, 3)
            # D(W(f_s; x_s, x′_d))
            out = self.live_portrait_wrapper.warp_decode(f_s_user, x_s_user, x_d_new)
            out = self.live_portrait_wrapper.parse_output(out['out'])[0]
            out_to_ori_blend = paste_back(out, crop_M_c2o, img_rgb, mask_ori)
            # gr.Info("Run successfully!", duration=2)
            return out, out_to_ori_blend


    def prepare_retargeting(self, input_image, flag_do_crop = True):
        """ for single image retargeting
        """
        if input_image is not None:
            # gr.Info("Upload successfully!", duration=2)
            inference_cfg = self.live_portrait_wrapper.cfg
            ######## process source portrait ########
            img_rgb = load_img_online(input_image, mode='rgb', max_dim=1280, n=1) # n=1 means do not trim the pixels
            log(f"Load source image from {input_image}.")
            crop_info = self.cropper.crop_single_image(img_rgb)
            if flag_do_crop:
                I_s = self.live_portrait_wrapper.prepare_source(crop_info['img_crop_256x256'])
            else:
                I_s = self.live_portrait_wrapper.prepare_source(img_rgb)
            x_s_info = self.live_portrait_wrapper.get_kp_info(I_s)
            # R_s = get_rotation_matrix(x_s_info['pitch'], x_s_info['yaw'], x_s_info['roll'])
            ############################################
            f_s_user = self.live_portrait_wrapper.extract_feature_3d(I_s)
            x_s_user = self.live_portrait_wrapper.transform_keypoint(x_s_info)
            source_lmk_user = crop_info['lmk_crop']
            crop_M_c2o = crop_info['M_c2o']
            mask_ori = prepare_paste_back(inference_cfg.mask_crop, crop_info['M_c2o'], dsize=(img_rgb.shape[1], img_rgb.shape[0]))
            return f_s_user, x_s_user, source_lmk_user, crop_M_c2o, mask_ori, img_rgb
        else:
            # when press the clear button, go here
            raise gr.Error("Please upload a source portrait as the retargeting input 🤗🤗🤗", duration=5)