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# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This code is based on https://github.com/LCFractal/AIC21-MTMC/tree/main/reid/reid-matching/tools
"""
import os
import re
import cv2
from tqdm import tqdm
import numpy as np
try:
import motmetrics as mm
except:
print(
'Warning: Unable to use motmetrics in MTMCT in PP-Tracking, please install motmetrics, for example: `pip install motmetrics`, see https://github.com/longcw/py-motmetrics'
)
pass
from functools import reduce
from .utils import parse_pt_gt, parse_pt, compare_dataframes_mtmc
from .utils import get_labels, getData, gen_new_mot
from .camera_utils import get_labels_with_camera
from .zone import Zone
from ..visualize import plot_tracking
__all__ = [
'trajectory_fusion',
'sub_cluster',
'gen_res',
'print_mtmct_result',
'get_mtmct_matching_results',
'save_mtmct_crops',
'save_mtmct_vis_results',
]
def trajectory_fusion(mot_feature, cid, cid_bias, use_zone=False, zone_path=''):
cur_bias = cid_bias[cid]
mot_list_break = {}
if use_zone:
zones = Zone(zone_path=zone_path)
zones.set_cam(cid)
mot_list = parse_pt(mot_feature, zones)
else:
mot_list = parse_pt(mot_feature)
if use_zone:
mot_list = zones.break_mot(mot_list, cid)
mot_list = zones.filter_mot(mot_list, cid) # filter by zone
mot_list = zones.filter_bbox(mot_list, cid) # filter bbox
mot_list_break = gen_new_mot(mot_list) # save break feature for gen result
tid_data = dict()
for tid in mot_list:
tracklet = mot_list[tid]
if len(tracklet) <= 1:
continue
frame_list = list(tracklet.keys())
frame_list.sort()
# filter area too large
zone_list = [tracklet[f]['zone'] for f in frame_list]
feature_list = [
tracklet[f]['feat'] for f in frame_list
if (tracklet[f]['bbox'][3] - tracklet[f]['bbox'][1]) *
(tracklet[f]['bbox'][2] - tracklet[f]['bbox'][0]) > 2000
]
if len(feature_list) < 2:
feature_list = [tracklet[f]['feat'] for f in frame_list]
io_time = [
cur_bias + frame_list[0] / 10., cur_bias + frame_list[-1] / 10.
]
all_feat = np.array([feat for feat in feature_list])
mean_feat = np.mean(all_feat, axis=0)
tid_data[tid] = {
'cam': cid,
'tid': tid,
'mean_feat': mean_feat,
'zone_list': zone_list,
'frame_list': frame_list,
'tracklet': tracklet,
'io_time': io_time
}
return tid_data, mot_list_break
def sub_cluster(cid_tid_dict,
scene_cluster,
use_ff=True,
use_rerank=True,
use_camera=False,
use_st_filter=False):
'''
cid_tid_dict: all camera_id and track_id
scene_cluster: like [41, 42, 43, 44, 45, 46] in AIC21 MTMCT S06 test videos
'''
assert (len(scene_cluster) != 0), "Error: scene_cluster length equals 0"
cid_tids = sorted(
[key for key in cid_tid_dict.keys() if key[0] in scene_cluster])
if use_camera:
clu = get_labels_with_camera(
cid_tid_dict,
cid_tids,
use_ff=use_ff,
use_rerank=use_rerank,
use_st_filter=use_st_filter)
else:
clu = get_labels(
cid_tid_dict,
cid_tids,
use_ff=use_ff,
use_rerank=use_rerank,
use_st_filter=use_st_filter)
new_clu = list()
for c_list in clu:
if len(c_list) <= 1: continue
cam_list = [cid_tids[c][0] for c in c_list]
if len(cam_list) != len(set(cam_list)): continue
new_clu.append([cid_tids[c] for c in c_list])
all_clu = new_clu
cid_tid_label = dict()
for i, c_list in enumerate(all_clu):
for c in c_list:
cid_tid_label[c] = i + 1
return cid_tid_label
def gen_res(output_dir_filename,
scene_cluster,
map_tid,
mot_list_breaks,
use_roi=False,
roi_dir=''):
f_w = open(output_dir_filename, 'w')
for idx, mot_feature in enumerate(mot_list_breaks):
cid = scene_cluster[idx]
img_rects = parse_pt_gt(mot_feature)
if use_roi:
assert (roi_dir != ''), "Error: roi_dir is not empty!"
roi = cv2.imread(os.path.join(roi_dir, f'c{cid:03d}/roi.jpg'), 0)
height, width = roi.shape
for fid in img_rects:
tid_rects = img_rects[fid]
fid = int(fid) + 1
for tid_rect in tid_rects:
tid = tid_rect[0]
rect = tid_rect[1:]
cx = 0.5 * rect[0] + 0.5 * rect[2]
cy = 0.5 * rect[1] + 0.5 * rect[3]
w = rect[2] - rect[0]
w = min(w * 1.2, w + 40)
h = rect[3] - rect[1]
h = min(h * 1.2, h + 40)
rect[2] -= rect[0]
rect[3] -= rect[1]
rect[0] = max(0, rect[0])
rect[1] = max(0, rect[1])
x1, y1 = max(0, cx - 0.5 * w), max(0, cy - 0.5 * h)
if use_roi:
x2, y2 = min(width, cx + 0.5 * w), min(height, cy + 0.5 * h)
else:
x2, y2 = cx + 0.5 * w, cy + 0.5 * h
w, h = x2 - x1, y2 - y1
new_rect = list(map(int, [x1, y1, w, h]))
rect = list(map(int, rect))
if (cid, tid) in map_tid:
new_tid = map_tid[(cid, tid)]
f_w.write(
str(cid) + ' ' + str(new_tid) + ' ' + str(fid) + ' ' +
' '.join(map(str, new_rect)) + ' -1 -1'
'\n')
print('gen_res: write file in {}'.format(output_dir_filename))
f_w.close()
def print_mtmct_result(gt_file, pred_file):
names = [
'CameraId', 'Id', 'FrameId', 'X', 'Y', 'Width', 'Height', 'Xworld',
'Yworld'
]
gt = getData(gt_file, names=names)
pred = getData(pred_file, names=names)
summary = compare_dataframes_mtmc(gt, pred)
print('MTMCT summary: ', summary.columns.tolist())
formatters = {
'idf1': '{:2.2f}'.format,
'idp': '{:2.2f}'.format,
'idr': '{:2.2f}'.format,
'mota': '{:2.2f}'.format
}
summary = summary[['idf1', 'idp', 'idr', 'mota']]
summary.loc[:, 'idp'] *= 100
summary.loc[:, 'idr'] *= 100
summary.loc[:, 'idf1'] *= 100
summary.loc[:, 'mota'] *= 100
try:
import motmetrics as mm
except Exception as e:
raise RuntimeError(
'Unable to use motmetrics in MTMCT in PP-Tracking, please install motmetrics, for example: `pip install motmetrics`, see https://github.com/longcw/py-motmetrics'
)
print(
mm.io.render_summary(
summary,
formatters=formatters,
namemap=mm.io.motchallenge_metric_names))
def get_mtmct_matching_results(pred_mtmct_file, secs_interval=0.5,
video_fps=20):
res = np.loadtxt(pred_mtmct_file) # 'cid, tid, fid, x1, y1, w, h, -1, -1'
camera_ids = list(map(int, np.unique(res[:, 0])))
res = res[:, :7]
# each line in res: 'cid, tid, fid, x1, y1, w, h'
camera_tids = []
camera_results = dict()
for c_id in camera_ids:
camera_results[c_id] = res[res[:, 0] == c_id]
tids = np.unique(camera_results[c_id][:, 1])
tids = list(map(int, tids))
camera_tids.append(tids)
# select common tids throughout each video
common_tids = reduce(np.intersect1d, camera_tids)
if len(common_tids) == 0:
print(
'No common tracked ids in these videos, please check your MOT result or select new videos.'
)
return None, None
# get mtmct matching results by cid_tid_fid_results[c_id][t_id][f_id]
cid_tid_fid_results = dict()
cid_tid_to_fids = dict()
interval = int(secs_interval * video_fps) # preferably less than 10
for c_id in camera_ids:
cid_tid_fid_results[c_id] = dict()
cid_tid_to_fids[c_id] = dict()
for t_id in common_tids:
tid_mask = camera_results[c_id][:, 1] == t_id
cid_tid_fid_results[c_id][t_id] = dict()
camera_trackid_results = camera_results[c_id][tid_mask]
fids = np.unique(camera_trackid_results[:, 2])
fids = fids[fids % interval == 0]
fids = list(map(int, fids))
cid_tid_to_fids[c_id][t_id] = fids
for f_id in fids:
st_frame = f_id
ed_frame = f_id + interval
st_mask = camera_trackid_results[:, 2] >= st_frame
ed_mask = camera_trackid_results[:, 2] < ed_frame
frame_mask = np.logical_and(st_mask, ed_mask)
cid_tid_fid_results[c_id][t_id][f_id] = camera_trackid_results[
frame_mask]
return camera_results, cid_tid_fid_results
def save_mtmct_crops(cid_tid_fid_res,
images_dir,
crops_dir,
width=300,
height=200):
camera_ids = cid_tid_fid_res.keys()
seqs_folder = os.listdir(images_dir)
seqs = []
for x in seqs_folder:
if os.path.isdir(os.path.join(images_dir, x)):
seqs.append(x)
assert len(seqs) == len(camera_ids)
seqs.sort()
if not os.path.exists(crops_dir):
os.makedirs(crops_dir)
common_tids = list(cid_tid_fid_res[list(camera_ids)[0]].keys())
# get crops by name 'tid_cid_fid.jpg
for t_id in common_tids:
for i, c_id in enumerate(camera_ids):
infer_dir = os.path.join(images_dir, seqs[i])
if os.path.exists(os.path.join(infer_dir, 'img1')):
infer_dir = os.path.join(infer_dir, 'img1')
all_images = os.listdir(infer_dir)
all_images.sort()
for f_id in cid_tid_fid_res[c_id][t_id].keys():
frame_idx = f_id - 1 if f_id > 0 else 0
im_path = os.path.join(infer_dir, all_images[frame_idx])
im = cv2.imread(im_path) # (H, W, 3)
# only select one track
track = cid_tid_fid_res[c_id][t_id][f_id][0]
cid, tid, fid, x1, y1, w, h = [int(v) for v in track]
clip = im[y1:(y1 + h), x1:(x1 + w)]
clip = cv2.resize(clip, (width, height))
cv2.imwrite(
os.path.join(crops_dir,
'tid{:06d}_cid{:06d}_fid{:06d}.jpg'.format(
tid, cid, fid)), clip)
print("Finish cropping image of tracked_id {} in camera: {}".format(
t_id, c_id))
def save_mtmct_vis_results(camera_results,
images_dir,
save_dir,
save_videos=False):
# camera_results: 'cid, tid, fid, x1, y1, w, h'
camera_ids = camera_results.keys()
seqs_folder = os.listdir(images_dir)
seqs = []
for x in seqs_folder:
if os.path.isdir(os.path.join(images_dir, x)):
seqs.append(x)
assert len(seqs) == len(camera_ids)
seqs.sort()
if not os.path.exists(save_dir):
os.makedirs(save_dir)
for i, c_id in enumerate(camera_ids):
print("Start visualization for camera {} of sequence {}.".format(
c_id, seqs[i]))
cid_save_dir = os.path.join(save_dir, '{}'.format(seqs[i]))
if not os.path.exists(cid_save_dir):
os.makedirs(cid_save_dir)
infer_dir = os.path.join(images_dir, seqs[i])
if os.path.exists(os.path.join(infer_dir, 'img1')):
infer_dir = os.path.join(infer_dir, 'img1')
all_images = os.listdir(infer_dir)
all_images.sort()
for f_id, im_path in enumerate(all_images):
img = cv2.imread(os.path.join(infer_dir, im_path))
tracks = camera_results[c_id][camera_results[c_id][:, 2] == f_id]
if tracks.shape[0] > 0:
tracked_ids = tracks[:, 1]
xywhs = tracks[:, 3:]
online_im = plot_tracking(
img, xywhs, tracked_ids, scores=None, frame_id=f_id)
else:
online_im = img
print('Frame {} of seq {} has no tracking results'.format(
f_id, seqs[i]))
cv2.imwrite(
os.path.join(cid_save_dir, '{:05d}.jpg'.format(f_id)),
online_im)
if f_id % 40 == 0:
print('Processing frame {}'.format(f_id))
if save_videos:
output_video_path = os.path.join(cid_save_dir, '..',
'{}_mtmct_vis.mp4'.format(seqs[i]))
cmd_str = 'ffmpeg -f image2 -i {}/%05d.jpg {}'.format(
cid_save_dir, output_video_path)
os.system(cmd_str)
print('Save camera {} video in {}.'.format(seqs[i],
output_video_path))
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