# やりたいこと

Crowd countingのモデル CSRNet用にBeijing BRTデータセットの人物頭部位置のアノテーションからdensity mapのアノテーションを作成したい。

# エラー

``````Traceback (most recent call last):
File "/path/to/directory/make_dataset.py", line 67, in <module>
k = gaussian_filter_density(k)
File "/path/to/directory/make_dataset.py", line 38, in gaussian_filter_density
density += gaussian_filter(pt2d, sigma, mode='constant')
File "/path/to/directory/env/lib/python3.10/site-packages/scipy/ndimage/_filters.py", line 368, in gaussian_filter
gaussian_filter1d(input, sigma, axis, order, output,
File "/path/to/directory/env/lib/python3.10/site-packages/scipy/ndimage/_filters.py", line 269, in gaussian_filter1d
lw = int(truncate * sd + 0.5)
OverflowError: cannot convert float infinity to integer
``````

# コード

## 実行ファイル

`make_dataset.py`

``````import h5py
import scipy.io as io
import PIL.Image as Image
import numpy as np
import os
import glob
from matplotlib import pyplot as plt
from scipy.ndimage import gaussian_filter
import scipy
import json
from matplotlib import cm as CM
# from image import *
# from model import CSRNet
import torch

def gaussian_filter_density(gt):
print(gt.shape)
density = np.zeros(gt.shape, dtype=np.float32)
gt_count = np.count_nonzero(gt)
if gt_count == 0:
return density

pts = np.array(list(zip(np.nonzero(gt)[1], np.nonzero(gt)[0])))
leafsize = 2048
# build kdtree
tree = scipy.spatial.KDTree(pts.copy(), leafsize=leafsize)
# query kdtree
distances, locations = tree.query(pts, k=4)

print('generate density...')
for i, pt in enumerate(pts):
pt2d = np.zeros(gt.shape, dtype=np.float32)
pt2d[pt[1],pt[0]] = 1.
if gt_count > 1:
sigma = (distances[i][1]+distances[i][2]+distances[i][3])*0.1
else:
sigma = np.average(np.array(gt.shape))/2./2. #case: 1 point
density += gaussian_filter(pt2d, sigma, mode='constant')
print('done.')
return density

# set the root to Beijing BRT
root = '/path/to/Beijing-BRT-dataset'

#now generate the ground truth
train_path = os.path.join(root, 'train', 'frame')
test_path = os.path.join(root, 'test', 'frame')
path_sets = [train_path, test_path]

img_paths = []
for path in path_sets:
for img_path in glob.glob(os.path.join(path, '*.jpg')):
img_paths.append(img_path)

for img_path in img_paths:
print(img_path)
k = np.zeros((img.shape[0], img.shape[1]))
gt = mat['loc']

for i in range(len(gt)):
if int(gt[i][1]) < img.shape[0] and int(gt[i][0]) < img.shape[1]:
k[int(gt[i][1]), int(gt[i][0])] = 1
print(k)
k = gaussian_filter_density(k)
with h5py.File(img_path.replace('.jpg', '.h5').replace('frame', 'ground_truth'), 'w') as hf:
hf['density'] = k

``````

コードはこちらのCSRNet開発者のコードQiita記事こちらのサイトを参考に、Python 3用にコードを修正し、元のコードはShanghaiTechデータセット用に書かれているのでBeijing BRTデータセット用にさらにコードを変更したものです。

# 環境

• Windows 11上のWSL2, Ubuntu 22.04
• Python 3.10（venv使用）
• SciPy 1.10.0

# その他

## 1 件の回答

コードの６７行目

``````density += gaussian_filter(pt2d, sigma, mode='constant')
``````

で渡した`sigma`の値が無限大になっていることがエラーの原因であることがわかりました。

`sigma`の値を適切な上限値に制限することでエラーを回避できます。

``````sigma = (distances[i][1]+distances[i][2]+distances[i][3])*0.1
``````

``````res = min(gt.shape)  # The resolution here is the number of pixels in vertical or horizontal, whichever is smaller

sigma = min((distances[i][1]+distances[i][2]+distances[i][3])*0.1, res * 10)  # To prevent an overflow error
``````

に変更する。