| import torch
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| from utils.flow_viz import flow_tensor_to_image
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| class Logger:
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| def __init__(self, lr_scheduler,
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| summary_writer,
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| summary_freq=100,
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| start_step=0,
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| ):
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| self.lr_scheduler = lr_scheduler
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| self.total_steps = start_step
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| self.running_loss = {}
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| self.summary_writer = summary_writer
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| self.summary_freq = summary_freq
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| def print_training_status(self, mode='train'):
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| print('step: %06d \t epe: %.3f' % (self.total_steps, self.running_loss['epe'] / self.summary_freq))
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| for k in self.running_loss:
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| self.summary_writer.add_scalar(mode + '/' + k,
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| self.running_loss[k] / self.summary_freq, self.total_steps)
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| self.running_loss[k] = 0.0
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|
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| def lr_summary(self):
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| lr = self.lr_scheduler.get_last_lr()[0]
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| self.summary_writer.add_scalar('lr', lr, self.total_steps)
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| def add_image_summary(self, img1, img2, flow_preds, flow_gt, mode='train',
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| ):
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| if self.total_steps % self.summary_freq == 0:
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| img_concat = torch.cat((img1[0].detach().cpu(), img2[0].detach().cpu()), dim=-1)
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| img_concat = img_concat.type(torch.uint8)
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| flow_pred = flow_tensor_to_image(flow_preds[-1][0])
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| forward_flow_gt = flow_tensor_to_image(flow_gt[0])
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| flow_concat = torch.cat((torch.from_numpy(flow_pred),
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| torch.from_numpy(forward_flow_gt)), dim=-1)
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| concat = torch.cat((img_concat, flow_concat), dim=-2)
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| self.summary_writer.add_image(mode + '/img_pred_gt', concat, self.total_steps)
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| def push(self, metrics, mode='train'):
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| self.total_steps += 1
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| self.lr_summary()
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| for key in metrics:
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| if key not in self.running_loss:
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| self.running_loss[key] = 0.0
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| self.running_loss[key] += metrics[key]
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| if self.total_steps % self.summary_freq == 0:
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| self.print_training_status(mode)
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| self.running_loss = {}
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| def write_dict(self, results):
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| for key in results:
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| tag = key.split('_')[0]
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| tag = tag + '/' + key
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| self.summary_writer.add_scalar(tag, results[key], self.total_steps)
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| def close(self):
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| self.summary_writer.close()
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