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PGM_feature_generation.py
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PGM_feature_generation.py
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# -*- coding: utf-8 -*-
from scipy.interpolate import interp1d
import pandas
import argparse
import numpy
import json
import cPickle as pickle
import os
def load_json(file):
with open(file) as json_file:
data = json.load(json_file)
return data
# def getDatasetDict():
# df=pandas.read_csv("./data/activitynet_annotations/video_info_new.csv")
# json_data= load_json("./data/activitynet_annotations/anet_anno_action.json")
# database=json_data
# video_dict = {}
# for i in range(len(df)):
# video_name=df.video.values[i]
# video_info=database[video_name]
# video_new_info={}
# video_new_info['duration_frame']=video_info['duration_frame']
# video_new_info['duration_second']=video_info['duration_second']
# video_new_info["feature_frame"]=video_info['feature_frame']
# video_new_info['annotations']=video_info['annotations']
# video_new_info['subset'] = df.subset.values[i]
# video_dict[video_name]=video_new_info
# return video_dict
def getDatasetDict(gt_path, split_path):
with open(gt_path, 'rb') as input_file:
database = pickle.load(input_file)
with open(split_path, 'rb') as input_file:
db_splits = pickle.load(input_file)
video_dict = {}
for snippet_name in database:
video_info = database[snippet_name]
video_new_info = {}
video_name = snippet_name.split('-')[0]
if video_name in db_splits['train']:
video_new_info['subset'] = 'train'
elif video_name in db_splits['val']:
video_new_info['subset'] = 'val'
elif video_name in db_splits['ts']:
video_new_info['subset'] = 'test'
video_new_info['annotations'] = video_info['annotations']
video_new_info['frame_inds'] = video_info['frame_inds']
video_dict[snippet_name] = video_new_info
return video_dict
def generateFeature(video_name, video_dict, experiment_type):
num_sample_start=8
num_sample_end=8
num_sample_action=16
num_sample_interpld = 3
src_path = os.path.join('../../output', experiment_type, 'TEM_results/{}.csv'.format(video_name))
# adf=pandas.read_csv("../../output/TEM_results/"+video_name+".csv")
adf=pandas.read_csv(src_path)
score_action=adf.action.values[:]
seg_xmins = adf.xmin.values[:]
seg_xmaxs = adf.xmax.values[:]
video_scale = len(adf)
video_gap = seg_xmaxs[0] - seg_xmins[0]
video_extend = video_scale / 4 + 10
src_path = os.path.join('../../output', experiment_type, 'PGM_proposals/{}.csv'.format(video_name))
# pdf=pandas.read_csv("../../output/PGM_proposals/"+video_name+".csv")
pdf=pandas.read_csv(src_path)
video_subset = video_dict[video_name]['subset']
if video_subset == "train":
pdf=pdf[:500]
else:
pdf=pdf[:1000]
tmp_zeros=numpy.zeros([video_extend])
score_action=numpy.concatenate((tmp_zeros,score_action,tmp_zeros))
tmp_cell = video_gap
tmp_x = [-tmp_cell/2-(video_extend-1-ii)*tmp_cell for ii in range(video_extend)] + \
[tmp_cell/2+ii*tmp_cell for ii in range(video_scale)] + \
[tmp_cell/2+seg_xmaxs[-1] +ii*tmp_cell for ii in range(video_extend)]
f_action=interp1d(tmp_x,score_action,axis=0)
feature_bsp=[]
for idx in range(len(pdf)):
xmin=pdf.xmin.values[idx]
xmax=pdf.xmax.values[idx]
xlen=xmax-xmin
xmin_0=xmin-xlen/5
xmin_1=xmin+xlen/5
xmax_0=xmax-xlen/5
xmax_1=xmax+xlen/5
#start
plen_start= (xmin_1-xmin_0)/(num_sample_start-1)
plen_sample = plen_start / num_sample_interpld
tmp_x_new = [ xmin_0 - plen_start/2 + plen_sample * ii for ii in range(num_sample_start*num_sample_interpld +1 )]
tmp_y_new_start_action=f_action(tmp_x_new)
tmp_y_new_start = [numpy.mean(tmp_y_new_start_action[ii*num_sample_interpld:(ii+1)*num_sample_interpld+1]) for ii in range(num_sample_start) ]
#end
plen_end= (xmax_1-xmax_0)/(num_sample_end-1)
plen_sample = plen_end / num_sample_interpld
tmp_x_new = [ xmax_0 - plen_end/2 + plen_sample * ii for ii in range(num_sample_end*num_sample_interpld +1 )]
tmp_y_new_end_action=f_action(tmp_x_new)
tmp_y_new_end = [numpy.mean(tmp_y_new_end_action[ii*num_sample_interpld:(ii+1)*num_sample_interpld+1]) for ii in range(num_sample_end) ]
#action
plen_action= (xmax-xmin)/(num_sample_action-1)
plen_sample = plen_action / num_sample_interpld
tmp_x_new = [ xmin - plen_action/2 + plen_sample * ii for ii in range(num_sample_action*num_sample_interpld +1 )]
tmp_y_new_action=f_action(tmp_x_new)
tmp_y_new_action = [numpy.mean(tmp_y_new_action[ii*num_sample_interpld:(ii+1)*num_sample_interpld+1]) for ii in range(num_sample_action) ]
tmp_feature = numpy.concatenate([tmp_y_new_action,tmp_y_new_start,tmp_y_new_end])
feature_bsp.append(tmp_feature)
feature_bsp = numpy.array(feature_bsp)
dst_path = os.path.join('../../output', experiment_type, 'PGM_features/{}'.format(video_name))
# numpy.save("../../output/PGM_feature/"+video_name,feature_bsp)
numpy.save(dst_path,feature_bsp)
def parse_arguments():
parser = argparse.ArgumentParser(description="Boundary Sensitive Network")
parser.add_argument('--experiment', default=None, help='Which folder to store samples and models')
# parser.add_argument('start_idx', type=int)
# parser.add_argument('end_idx', type=int)
args = parser.parse_args()
return args
if __name__ == '__main__':
opt = parse_arguments()
gt_path = '../../datasets/virat/bsn_dataset/stride_100_interval_300/gt_annotations.pkl'
split_path = '../../datasets/virat/bsn_dataset/stride_100_interval_300/split.pkl'
video_dict=getDatasetDict(gt_path, split_path)
# video_list=video_dict.keys()[args.start_idx:args.end_idx]
video_list=video_dict.keys()
for idx, video_name in enumerate(video_list):
print 'Process {}th video: {}'.format(idx, video_name)
generateFeature(video_name,video_dict, opt.experiment)
#break