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wpdc_loss.py
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wpdc_loss.py
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#!/usr/bin/env python3
# coding: utf-8
import torch
import torch.nn as nn
from math import sqrt
from utils.io import _numpy_to_cuda
from utils.params import *
_to_tensor = _numpy_to_cuda # gpu
def _parse_param_batch(param):
"""Work for both numpy and tensor"""
N = param.shape[0]
p_ = param[:, :12].view(N, 3, -1)
p = p_[:, :, :3]
offset = p_[:, :, -1].view(N, 3, 1)
alpha_shp = param[:, 12:52].view(N, -1, 1)
alpha_exp = param[:, 52:].view(N, -1, 1)
return p, offset, alpha_shp, alpha_exp
class WPDCLoss(nn.Module):
"""Input and target are all 62-d param"""
def __init__(self, opt_style='resample', resample_num=132):
super(WPDCLoss, self).__init__()
self.opt_style = opt_style
self.param_mean = _to_tensor(param_mean)
self.param_std = _to_tensor(param_std)
self.u = _to_tensor(u)
self.w_shp = _to_tensor(w_shp)
self.w_exp = _to_tensor(w_exp)
self.w_norm = _to_tensor(w_norm)
self.w_shp_length = self.w_shp.shape[0] // 3
self.keypoints = _to_tensor(keypoints)
self.resample_num = resample_num
def reconstruct_and_parse(self, input, target):
# reconstruct
param = input * self.param_std + self.param_mean
param_gt = target * self.param_std + self.param_mean
# parse param
p, offset, alpha_shp, alpha_exp = _parse_param_batch(param)
pg, offsetg, alpha_shpg, alpha_expg = _parse_param_batch(param_gt)
return (p, offset, alpha_shp, alpha_exp), (pg, offsetg, alpha_shpg, alpha_expg)
def _calc_weights_resample(self, input_, target_):
# resample index
if self.resample_num <= 0:
keypoints_mix = self.keypoints
else:
index = torch.randperm(self.w_shp_length)[:self.resample_num].reshape(-1, 1)
keypoints_resample = torch.cat((3 * index, 3 * index + 1, 3 * index + 2), dim=1).view(-1).cuda()
keypoints_mix = torch.cat((self.keypoints, keypoints_resample))
w_shp_base = self.w_shp[keypoints_mix]
u_base = self.u[keypoints_mix]
w_exp_base = self.w_exp[keypoints_mix]
input = torch.tensor(input_.data.clone(), requires_grad=False)
target = torch.tensor(target_.data.clone(), requires_grad=False)
(p, offset, alpha_shp, alpha_exp), (pg, offsetg, alpha_shpg, alpha_expg) \
= self.reconstruct_and_parse(input, target)
input = self.param_std * input + self.param_mean
target = self.param_std * target + self.param_mean
N = input.shape[0]
offset[:, -1] = offsetg[:, -1]
weights = torch.zeros_like(input, dtype=torch.float)
tmpv = (u_base + w_shp_base @ alpha_shp + w_exp_base @ alpha_exp).view(N, -1, 3).permute(0, 2, 1)
tmpv_norm = torch.norm(tmpv, dim=2)
offset_norm = sqrt(w_shp_base.shape[0] // 3)
# for pose
param_diff_pose = torch.abs(input[:, :11] - target[:, :11])
for ind in range(11):
if ind in [0, 4, 8]:
weights[:, ind] = param_diff_pose[:, ind] * tmpv_norm[:, 0]
elif ind in [1, 5, 9]:
weights[:, ind] = param_diff_pose[:, ind] * tmpv_norm[:, 1]
elif ind in [2, 6, 10]:
weights[:, ind] = param_diff_pose[:, ind] * tmpv_norm[:, 2]
else:
weights[:, ind] = param_diff_pose[:, ind] * offset_norm
## This is the optimizest version
# for shape_exp
magic_number = 0.00057339936 # scale
param_diff_shape_exp = torch.abs(input[:, 12:] - target[:, 12:])
# weights[:, 12:] = magic_number * param_diff_shape_exp * self.w_norm
w = torch.cat((w_shp_base, w_exp_base), dim=1)
w_norm = torch.norm(w, dim=0)
# print('here')
weights[:, 12:] = magic_number * param_diff_shape_exp * w_norm
eps = 1e-6
weights[:, :11] += eps
weights[:, 12:] += eps
# normalize the weights
maxes, _ = weights.max(dim=1)
maxes = maxes.view(-1, 1)
weights /= maxes
# zero the z
weights[:, 11] = 0
return weights
def forward(self, input, target, weights_scale=10):
if self.opt_style == 'resample':
weights = self._calc_weights_resample(input, target)
loss = weights * (input - target) ** 2
return loss.mean()
else:
raise Exception(f'Unknown opt style: {self.opt_style}')
if __name__ == '__main__':
pass