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train_cls.py
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train_cls.py
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"""
Author: Benny
Date: Nov 2019
"""
from dataset import ModelNetDataLoader
import argparse
import numpy as np
import os
import torch
import datetime
import logging
from pathlib import Path
from tqdm import tqdm
import sys
import provider
import importlib
import shutil
import hydra
import omegaconf
def test(model, loader, num_class=40):
mean_correct = []
class_acc = np.zeros((num_class,3))
for j, data in tqdm(enumerate(loader), total=len(loader)):
points, target = data
target = target[:, 0]
points, target = points.cuda(), target.cuda()
classifier = model.eval()
pred = classifier(points)
pred_choice = pred.data.max(1)[1]
for cat in np.unique(target.cpu()):
classacc = pred_choice[target==cat].eq(target[target==cat].long().data).cpu().sum()
class_acc[cat,0]+= classacc.item()/float(points[target==cat].size()[0])
class_acc[cat,1]+=1
correct = pred_choice.eq(target.long().data).cpu().sum()
mean_correct.append(correct.item()/float(points.size()[0]))
class_acc[:,2] = class_acc[:,0]/ class_acc[:,1]
class_acc = np.mean(class_acc[:,2])
instance_acc = np.mean(mean_correct)
return instance_acc, class_acc
@hydra.main(config_path='config', config_name='cls')
def main(args):
omegaconf.OmegaConf.set_struct(args, False)
'''HYPER PARAMETER'''
os.environ["CUDA_VISIBLE_DEVICES"] = str(args.gpu)
logger = logging.getLogger(__name__)
print(args.pretty())
'''DATA LOADING'''
logger.info('Load dataset ...')
DATA_PATH = hydra.utils.to_absolute_path('modelnet40_normal_resampled/')
TRAIN_DATASET = ModelNetDataLoader(root=DATA_PATH, npoint=args.num_point, split='train', normal_channel=args.normal)
TEST_DATASET = ModelNetDataLoader(root=DATA_PATH, npoint=args.num_point, split='test', normal_channel=args.normal)
trainDataLoader = torch.utils.data.DataLoader(TRAIN_DATASET, batch_size=args.batch_size, shuffle=True, num_workers=4)
testDataLoader = torch.utils.data.DataLoader(TEST_DATASET, batch_size=args.batch_size, shuffle=False, num_workers=4)
'''MODEL LOADING'''
args.num_class = 40
args.input_dim = 6 if args.normal else 3
shutil.copy(hydra.utils.to_absolute_path('models/{}/model.py'.format(args.model.name)), '.')
classifier = getattr(importlib.import_module('models.{}.model'.format(args.model.name)), 'PointTransformerCls')(args).cuda()
criterion = torch.nn.CrossEntropyLoss()
try:
checkpoint = torch.load('best_model.pth')
start_epoch = checkpoint['epoch']
classifier.load_state_dict(checkpoint['model_state_dict'])
logger.info('Use pretrain model')
except:
logger.info('No existing model, starting training from scratch...')
start_epoch = 0
if args.optimizer == 'Adam':
optimizer = torch.optim.Adam(
classifier.parameters(),
lr=args.learning_rate,
betas=(0.9, 0.999),
eps=1e-08,
weight_decay=args.weight_decay
)
else:
optimizer = torch.optim.SGD(classifier.parameters(), lr=0.01, momentum=0.9)
scheduler = torch.optim.lr_scheduler.StepLR(optimizer, step_size=50, gamma=0.3)
global_epoch = 0
global_step = 0
best_instance_acc = 0.0
best_class_acc = 0.0
best_epoch = 0
mean_correct = []
'''TRANING'''
logger.info('Start training...')
for epoch in range(start_epoch,args.epoch):
logger.info('Epoch %d (%d/%s):' % (global_epoch + 1, epoch + 1, args.epoch))
classifier.train()
for batch_id, data in tqdm(enumerate(trainDataLoader, 0), total=len(trainDataLoader), smoothing=0.9):
points, target = data
points = points.data.numpy()
points = provider.random_point_dropout(points)
points[:,:, 0:3] = provider.random_scale_point_cloud(points[:,:, 0:3])
points[:,:, 0:3] = provider.shift_point_cloud(points[:,:, 0:3])
points = torch.Tensor(points)
target = target[:, 0]
points, target = points.cuda(), target.cuda()
optimizer.zero_grad()
pred = classifier(points)
loss = criterion(pred, target.long())
pred_choice = pred.data.max(1)[1]
correct = pred_choice.eq(target.long().data).cpu().sum()
mean_correct.append(correct.item() / float(points.size()[0]))
loss.backward()
optimizer.step()
global_step += 1
scheduler.step()
train_instance_acc = np.mean(mean_correct)
logger.info('Train Instance Accuracy: %f' % train_instance_acc)
with torch.no_grad():
instance_acc, class_acc = test(classifier.eval(), testDataLoader)
if (instance_acc >= best_instance_acc):
best_instance_acc = instance_acc
best_epoch = epoch + 1
if (class_acc >= best_class_acc):
best_class_acc = class_acc
logger.info('Test Instance Accuracy: %f, Class Accuracy: %f'% (instance_acc, class_acc))
logger.info('Best Instance Accuracy: %f, Class Accuracy: %f'% (best_instance_acc, best_class_acc))
if (instance_acc >= best_instance_acc):
logger.info('Save model...')
savepath = 'best_model.pth'
logger.info('Saving at %s'% savepath)
state = {
'epoch': best_epoch,
'instance_acc': instance_acc,
'class_acc': class_acc,
'model_state_dict': classifier.state_dict(),
'optimizer_state_dict': optimizer.state_dict(),
}
torch.save(state, savepath)
global_epoch += 1
logger.info('End of training...')
if __name__ == '__main__':
main()