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eval.py
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eval.py
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import os
from os import path
from argparse import ArgumentParser
import shutil
import torch
import torch.nn.functional as F
from torch.utils.data import DataLoader
import numpy as np
from PIL import Image
from inference.data.test_datasets import LongTestDataset, DAVISTestDataset, YouTubeVOSTestDataset
from inference.data.mask_mapper import MaskMapper
from model.network import XMem
from inference.inference_core import InferenceCore
from progressbar import progressbar
try:
import hickle as hkl
except ImportError:
print('Failed to import hickle. Fine if not using multi-scale testing.')
"""
Arguments loading
"""
parser = ArgumentParser()
parser.add_argument('--model', default='./saves/XMem.pth')
# Data options
parser.add_argument('--d16_path', default='../DAVIS/2016')
parser.add_argument('--d17_path', default='../DAVIS/2017')
parser.add_argument('--y18_path', default='../YouTube2018')
parser.add_argument('--y19_path', default='../YouTube')
parser.add_argument('--lv_path', default='../long_video_set')
# For generic (G) evaluation, point to a folder that contains "JPEGImages" and "Annotations"
parser.add_argument('--generic_path')
parser.add_argument('--dataset', help='D16/D17/Y18/Y19/LV1/LV3/G', default='D17')
parser.add_argument('--split', help='val/test', default='val')
parser.add_argument('--output', default=None)
parser.add_argument('--save_all', action='store_true',
help='Save all frames. Useful only in YouTubeVOS/long-time video', )
parser.add_argument('--benchmark', action='store_true', help='enable to disable amp for FPS benchmarking')
# Long-term memory options
parser.add_argument('--disable_long_term', action='store_true')
parser.add_argument('--max_mid_term_frames', help='T_max in paper, decrease to save memory', type=int, default=10)
parser.add_argument('--min_mid_term_frames', help='T_min in paper, decrease to save memory', type=int, default=5)
parser.add_argument('--max_long_term_elements', help='LT_max in paper, increase if objects disappear for a long time',
type=int, default=10000)
parser.add_argument('--num_prototypes', help='P in paper', type=int, default=128)
parser.add_argument('--top_k', type=int, default=30)
parser.add_argument('--mem_every', help='r in paper. Increase to improve running speed.', type=int, default=5)
parser.add_argument('--deep_update_every', help='Leave -1 normally to synchronize with mem_every', type=int, default=-1)
# Multi-scale options
parser.add_argument('--save_scores', action='store_true')
parser.add_argument('--flip', action='store_true')
parser.add_argument('--size', default=480, type=int,
help='Resize the shorter side to this size. -1 to use original resolution. ')
args = parser.parse_args()
config = vars(args)
config['enable_long_term'] = not config['disable_long_term']
if args.output is None:
args.output = f'../output/{args.dataset}_{args.split}'
print(f'Output path not provided. Defaulting to {args.output}')
"""
Data preparation
"""
is_youtube = args.dataset.startswith('Y')
is_davis = args.dataset.startswith('D')
is_lv = args.dataset.startswith('LV')
if is_youtube or args.save_scores:
out_path = path.join(args.output, 'Annotations')
else:
out_path = args.output
if is_youtube:
if args.dataset == 'Y18':
yv_path = args.y18_path
elif args.dataset == 'Y19':
yv_path = args.y19_path
if args.split == 'val':
args.split = 'valid'
meta_dataset = YouTubeVOSTestDataset(data_root=yv_path, split='valid', size=args.size)
elif args.split == 'test':
meta_dataset = YouTubeVOSTestDataset(data_root=yv_path, split='test', size=args.size)
else:
raise NotImplementedError
elif is_davis:
if args.dataset == 'D16':
if args.split == 'val':
# Set up Dataset, a small hack to use the image set in the 2017 folder because the 2016 one is of a different format
meta_dataset = DAVISTestDataset(args.d16_path, imset='../../2017/trainval/ImageSets/2016/val.txt', size=args.size)
else:
raise NotImplementedError
palette = None
elif args.dataset == 'D17':
if args.split == 'val':
meta_dataset = DAVISTestDataset(path.join(args.d17_path, 'trainval'), imset='2017/val.txt', size=args.size)
elif args.split == 'test':
meta_dataset = DAVISTestDataset(path.join(args.d17_path, 'test-dev'), imset='2017/test-dev.txt', size=args.size)
else:
raise NotImplementedError
elif is_lv:
if args.dataset == 'LV1':
meta_dataset = LongTestDataset(path.join(args.lv_path, 'long_video'))
elif args.dataset == 'LV3':
meta_dataset = LongTestDataset(path.join(args.lv_path, 'long_video_x3'))
else:
raise NotImplementedError
elif args.dataset == 'G':
meta_dataset = LongTestDataset(path.join(args.generic_path), size=args.size)
if not args.save_all:
args.save_all = True
print('save_all is forced to be true in generic evaluation mode.')
else:
raise NotImplementedError
torch.autograd.set_grad_enabled(False)
# Set up loader
meta_loader = meta_dataset.get_datasets()
# Load our checkpoint
network = XMem(config, args.model).cuda().eval()
if args.model is not None:
model_weights = torch.load(args.model)
network.load_weights(model_weights, init_as_zero_if_needed=True)
else:
print('No model loaded.')
total_process_time = 0
total_frames = 0
# Start eval
for vid_reader in progressbar(meta_loader, max_value=len(meta_dataset), redirect_stdout=True):
loader = DataLoader(vid_reader, batch_size=1, shuffle=False, num_workers=2)
vid_name = vid_reader.vid_name
vid_length = len(loader)
# no need to count usage for LT if the video is not that long anyway
config['enable_long_term_count_usage'] = (
config['enable_long_term'] and
(vid_length
/ (config['max_mid_term_frames']-config['min_mid_term_frames'])
* config['num_prototypes'])
>= config['max_long_term_elements']
)
mapper = MaskMapper()
processor = InferenceCore(network, config=config)
first_mask_loaded = False
for ti, data in enumerate(loader):
with torch.cuda.amp.autocast(enabled=not args.benchmark):
rgb = data['rgb'].cuda()[0]
msk = data.get('mask')
info = data['info']
frame = info['frame'][0]
shape = info['shape']
need_resize = info['need_resize'][0]
"""
For timing see https://discuss.pytorch.org/t/how-to-measure-time-in-pytorch/26964
Seems to be very similar in testing as my previous timing method
with two cuda sync + time.time() in STCN though
"""
start = torch.cuda.Event(enable_timing=True)
end = torch.cuda.Event(enable_timing=True)
start.record()
if not first_mask_loaded:
if msk is not None:
first_mask_loaded = True
else:
# no point to do anything without a mask
continue
if args.flip:
rgb = torch.flip(rgb, dims=[-1])
msk = torch.flip(msk, dims=[-1]) if msk is not None else None
# Map possibly non-continuous labels to continuous ones
if msk is not None:
msk, labels = mapper.convert_mask(msk[0].numpy())
msk = torch.Tensor(msk).cuda()
if need_resize:
msk = vid_reader.resize_mask(msk.unsqueeze(0))[0]
processor.set_all_labels(list(mapper.remappings.values()))
else:
labels = None
# Run the model on this frame
prob = processor.step(rgb, msk, labels, end=(ti==vid_length-1))
# Upsample to original size if needed
if need_resize:
prob = F.interpolate(prob.unsqueeze(1), shape, mode='bilinear', align_corners=False)[:,0]
end.record()
torch.cuda.synchronize()
total_process_time += (start.elapsed_time(end)/1000)
total_frames += 1
if args.flip:
prob = torch.flip(prob, dims=[-1])
# Probability mask -> index mask
out_mask = torch.max(prob, dim=0).indices
out_mask = (out_mask.detach().cpu().numpy()).astype(np.uint8)
if args.save_scores:
prob = (prob.detach().cpu().numpy()*255).astype(np.uint8)
# Save the mask
if args.save_all or info['save'][0]:
this_out_path = path.join(out_path, vid_name)
os.makedirs(this_out_path, exist_ok=True)
out_mask = mapper.remap_index_mask(out_mask)
out_img = Image.fromarray(out_mask)
if vid_reader.get_palette() is not None:
out_img.putpalette(vid_reader.get_palette())
out_img.save(os.path.join(this_out_path, frame[:-4]+'.png'))
if args.save_scores:
np_path = path.join(args.output, 'Scores', vid_name)
os.makedirs(np_path, exist_ok=True)
if ti==len(loader)-1:
hkl.dump(mapper.remappings, path.join(np_path, f'backward.hkl'), mode='w')
if args.save_all or info['save'][0]:
hkl.dump(prob, path.join(np_path, f'{frame[:-4]}.hkl'), mode='w', compression='lzf')
print(f'Total processing time: {total_process_time}')
print(f'Total processed frames: {total_frames}')
print(f'FPS: {total_frames / total_process_time}')
print(f'Max allocated memory (MB): {torch.cuda.max_memory_allocated() / (2**20)}')
if not args.save_scores:
if is_youtube:
print('Making zip for YouTubeVOS...')
shutil.make_archive(path.join(args.output, path.basename(args.output)), 'zip', args.output, 'Annotations')
elif is_davis and args.split == 'test':
print('Making zip for DAVIS test-dev...')
shutil.make_archive(args.output, 'zip', args.output)