Journal of Computer Applications ›› 2025, Vol. 45 ›› Issue (4): 1271-1284.DOI: 10.11772/j.issn.1001-9081.2024040561
• Multimedia computing and computer simulation • Previous Articles Next Articles
Qingqing ZHAO1,2, Bin HU1,2,3()
Received:
2024-05-07
Revised:
2024-09-24
Accepted:
2024-09-26
Online:
2025-04-08
Published:
2025-04-10
Contact:
Bin HU
About author:
ZHAO Qingqing, born in 1995, M. S. candidate. Her research interests include computing intelligence, computer vision.
Supported by:
通讯作者:
胡滨
作者简介:
赵轻轻(1995—),女,贵州仁怀人,硕士研究生,主要研究方向:计算智能、计算机视觉;
基金资助:
CLC Number:
Qingqing ZHAO, Bin HU. Moving pedestrian detection neural network with invariant global sparse contour point representation[J]. Journal of Computer Applications, 2025, 45(4): 1271-1284.
赵轻轻, 胡滨. 不变性全局稀疏轮廓点表征的运动行人检测神经网络[J]. 《计算机应用》唯一官方网站, 2025, 45(4): 1271-1284.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2024040561
参数名 | 值 | 参数名 | 值 |
---|---|---|---|
1 280 | 0.8 | ||
720 | 3 | ||
220 | 1 | ||
2 | 3 | ||
9 | 0.6 | ||
0.92 | 0.5 | ||
200 | 800 |
Tab. 1 Parameter setting of MPDNN
参数名 | 值 | 参数名 | 值 |
---|---|---|---|
1 280 | 0.8 | ||
720 | 3 | ||
220 | 1 | ||
2 | 3 | ||
9 | 0.6 | ||
0.92 | 0.5 | ||
200 | 800 |
视频序号 | 总帧数 | 实际行人所在 时间序列的帧号范围 | MPDNN检测出的 时间序列的帧号范围 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|---|---|---|
TP | TN | FN | FP | |||||||
Ⅰ | 287 | 46~287 | 49~287 | 239 | 45 | 3 | 0 | 98.95 | 1.24 | 0.00 |
Ⅱ | 300 | 45~300 | 47~295 | 249 | 44 | 7 | 0 | 97.67 | 2.73 | 0.00 |
Ⅲ | 325 | 105~325 | 107~324 | 218 | 104 | 3 | 0 | 99.08 | 1.36 | 0.00 |
Ⅳ | 175 | 34~175 | 49~170 | 122 | 33 | 20 | 0 | 88.57 | 14.08 | 0.00 |
Tab. 2 Numerical statistical results of validity test
视频序号 | 总帧数 | 实际行人所在 时间序列的帧号范围 | MPDNN检测出的 时间序列的帧号范围 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|---|---|---|
TP | TN | FN | FP | |||||||
Ⅰ | 287 | 46~287 | 49~287 | 239 | 45 | 3 | 0 | 98.95 | 1.24 | 0.00 |
Ⅱ | 300 | 45~300 | 47~295 | 249 | 44 | 7 | 0 | 97.67 | 2.73 | 0.00 |
Ⅲ | 325 | 105~325 | 107~324 | 218 | 104 | 3 | 0 | 99.08 | 1.36 | 0.00 |
Ⅳ | 175 | 34~175 | 49~170 | 122 | 33 | 20 | 0 | 88.57 | 14.08 | 0.00 |
视频 | 总帧数 | 行人尺度/(°) | 实际行人所在时间序列的帧号范围 | MPDNN检测时间序列的帧号范围 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|---|
200 | 0.73 | 90~200 | 0 | 0.00 | 100.00 | 0.00 | |
333 | 1.76 | 16~333 | 41~333 | 92.14 | 7.86 | 0.00 | |
290 | 3.51 | 13~273 | 13~273 | 100.00 | 0.00 | 0.00 | |
253 | 10.31 | 16~236 | 21~236 | 100.00 | 0.00 | 0.00 | |
130 | 25.59 | 11~119 | 11~119 | 100.00 | 0.00 | 0.00 | |
87 | 54.32 | 12~76 | 12~76 | 100.00 | 0.00 | 0.00 |
Tab. 3 Numerical statistical results of scale test
视频 | 总帧数 | 行人尺度/(°) | 实际行人所在时间序列的帧号范围 | MPDNN检测时间序列的帧号范围 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|---|
200 | 0.73 | 90~200 | 0 | 0.00 | 100.00 | 0.00 | |
333 | 1.76 | 16~333 | 41~333 | 92.14 | 7.86 | 0.00 | |
290 | 3.51 | 13~273 | 13~273 | 100.00 | 0.00 | 0.00 | |
253 | 10.31 | 16~236 | 21~236 | 100.00 | 0.00 | 0.00 | |
130 | 25.59 | 11~119 | 11~119 | 100.00 | 0.00 | 0.00 | |
87 | 54.32 | 12~76 | 12~76 | 100.00 | 0.00 | 0.00 |
视频 | 总帧数 | 实际行人所在时间序列的帧号范围 | MPDNN检测时间序列的帧号范围 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|
355 | 12~342 | 12~342 | 100.00 | 0.00 | 0.00 | |
195 | 67~147 | 0 | 58.46 | 100.00 | 0.00 | |
224 | 16~207 | 16~207 | 100.00 | 0.00 | 0.00 | |
162 | 21~156 | 21~156 | 100.00 | 0.00 | 0.00 |
Tab. 4 Numerical statistical results of motion posture test
视频 | 总帧数 | 实际行人所在时间序列的帧号范围 | MPDNN检测时间序列的帧号范围 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|
355 | 12~342 | 12~342 | 100.00 | 0.00 | 0.00 | |
195 | 67~147 | 0 | 58.46 | 100.00 | 0.00 | |
224 | 16~207 | 16~207 | 100.00 | 0.00 | 0.00 | |
162 | 21~156 | 21~156 | 100.00 | 0.00 | 0.00 |
视频 | 总帧数 | 实际行人所在时间序列 | MPDNN检测时间序列 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|
165 | 22~118 | 27~118 | 96.95 | 5.15 | 0.00 | |
180 | 14~120 | 0 | 40.56 | 100.00 | 0.00 | |
300 | 71~283 | 82~279 | 95.00 | 7.04 | 0.00 | |
240 | 34~196 | 0 | 32.37 | 100.00 | 0.00 |
Tab. 5 Numerical statistical results of occlusion test
视频 | 总帧数 | 实际行人所在时间序列 | MPDNN检测时间序列 | ACC/% | FNR/% | FPR/% |
---|---|---|---|---|---|---|
165 | 22~118 | 27~118 | 96.95 | 5.15 | 0.00 | |
180 | 14~120 | 0 | 40.56 | 100.00 | 0.00 | |
300 | 71~283 | 82~279 | 95.00 | 7.04 | 0.00 | |
240 | 34~196 | 0 | 32.37 | 100.00 | 0.00 |
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
Faster R-CNN[ | 842 | 198 | 19 | 66 | 92.44 | 2.21 | 6.07 |
Cascade R-CNN[ | 861 | 177 | 0 | 102 | 91.05 | 0.00 | 9.38 |
YOLOv5[ | 856 | 221 | 5 | 217 | 82.91 | 0.58 | 19.96 |
YOLOv8[ | 851 | 215 | 10 | 241 | 80.94 | 1.16 | 22.17 |
SSD[ | 786 | 205 | 75 | 24 | 90.92 | 8.71 | 2.21 |
MPDNN | 828 | 226 | 33 | 0 | 96.96 | 3.83 | 0.00 |
Tab. 6 Numerical statistical results of comparison experiments of object detection models
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
Faster R-CNN[ | 842 | 198 | 19 | 66 | 92.44 | 2.21 | 6.07 |
Cascade R-CNN[ | 861 | 177 | 0 | 102 | 91.05 | 0.00 | 9.38 |
YOLOv5[ | 856 | 221 | 5 | 217 | 82.91 | 0.58 | 19.96 |
YOLOv8[ | 851 | 215 | 10 | 241 | 80.94 | 1.16 | 22.17 |
SSD[ | 786 | 205 | 75 | 24 | 90.92 | 8.71 | 2.21 |
MPDNN | 828 | 226 | 33 | 0 | 96.96 | 3.83 | 0.00 |
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
F2DNet[ | 171 | 226 | 690 | 0 | 36.52 | 80.14 | 0.00 |
VLPD[ | 265 | 201 | 596 | 45 | 42.10 | 69.22 | 4.14 |
Pedestron[ | 661 | 197 | 200 | 16 | 79.89 | 23.23 | 1.47 |
BFDA[ | 725 | 226 | 136 | 0 | 87.49 | 15.80 | 0.00 |
MPDNN | 828 | 226 | 33 | 0 | 96.96 | 3.83 | 0.00 |
Tab. 7 Numerical statistical results of comparison experiments of pedestrian detection models
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
F2DNet[ | 171 | 226 | 690 | 0 | 36.52 | 80.14 | 0.00 |
VLPD[ | 265 | 201 | 596 | 45 | 42.10 | 69.22 | 4.14 |
Pedestron[ | 661 | 197 | 200 | 16 | 79.89 | 23.23 | 1.47 |
BFDA[ | 725 | 226 | 136 | 0 | 87.49 | 15.80 | 0.00 |
MPDNN | 828 | 226 | 33 | 0 | 96.96 | 3.83 | 0.00 |
模型 | 有效性测试数据集 | 尺度测试数据集 | 运动姿势测试数据集 | 遮挡测试数据集 | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
ACC | FNR | FPR | ACC | FNR | FPR | ACC | FNR | FPR | ACC | FNR | FPR | |
EMFD+SVM[ | 95.78 | 4.56 | 0.00 | 46.64 | 63.59 | 0.00 | 76.98 | 29.03 | 0.00 | 38.54 | 81.59 | 0.00 |
SOF+ACF[ | 63.29 | 49.21 | 0.00 | 66.82 | 39.54 | 0.00 | 67.37 | 34.51 | 0.00 | 41.23 | 78.35 | 0.00 |
TSM[ | 92.37 | 4.15 | 0.00 | 66.56 | 39.54 | 0.00 | 63.46 | 46.22 | 0.00 | 67.57 | 49.48 | 0.00 |
DeepStep[ | 98.31 | 2.41 | 0.00 | 59.09 | 51.86 | 0.00 | 87.69 | 13.47 | 0.00 | 57.81 | 72.24 | 0.00 |
MPDNN | 96.96 | 3.83 | 0.00 | 89.48 | 12.53 | 0.00 | 91.45 | 10.79 | 0.00 | 68.86 | 46.21 | 0.00 |
Tab. 8 Numerical statistical results of comparison experiments of moving pedestrian detection models
模型 | 有效性测试数据集 | 尺度测试数据集 | 运动姿势测试数据集 | 遮挡测试数据集 | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
ACC | FNR | FPR | ACC | FNR | FPR | ACC | FNR | FPR | ACC | FNR | FPR | |
EMFD+SVM[ | 95.78 | 4.56 | 0.00 | 46.64 | 63.59 | 0.00 | 76.98 | 29.03 | 0.00 | 38.54 | 81.59 | 0.00 |
SOF+ACF[ | 63.29 | 49.21 | 0.00 | 66.82 | 39.54 | 0.00 | 67.37 | 34.51 | 0.00 | 41.23 | 78.35 | 0.00 |
TSM[ | 92.37 | 4.15 | 0.00 | 66.56 | 39.54 | 0.00 | 63.46 | 46.22 | 0.00 | 67.57 | 49.48 | 0.00 |
DeepStep[ | 98.31 | 2.41 | 0.00 | 59.09 | 51.86 | 0.00 | 87.69 | 13.47 | 0.00 | 57.81 | 72.24 | 0.00 |
MPDNN | 96.96 | 3.83 | 0.00 | 89.48 | 12.53 | 0.00 | 91.45 | 10.79 | 0.00 | 68.86 | 46.21 | 0.00 |
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
CDNN[ | 0 | 45 | 242 | 0 | 15.68 | 100.00 | 0.00 |
CEBDNN[ | 0 | 45 | 242 | 0 | 15.68 | 100.00 | 0.00 |
DSNN[ | 124 | 45 | 118 | 124 | 41.12 | 48.76 | 43.21 |
STPDNN[ | 138 | 45 | 104 | 0 | 63.76 | 42.98 | 0.00 |
MPDNN | 239 | 45 | 3 | 0 | 98.95 | 1.24 | 0.00 |
Tab. 9 Numerical statistical results of comparison experiments of homologous models
模型 | 帧数 | ACC/% | FNR/% | FPR/% | |||
---|---|---|---|---|---|---|---|
TP | TN | FN | FP | ||||
CDNN[ | 0 | 45 | 242 | 0 | 15.68 | 100.00 | 0.00 |
CEBDNN[ | 0 | 45 | 242 | 0 | 15.68 | 100.00 | 0.00 |
DSNN[ | 124 | 45 | 118 | 124 | 41.12 | 48.76 | 43.21 |
STPDNN[ | 138 | 45 | 104 | 0 | 63.76 | 42.98 | 0.00 |
MPDNN | 239 | 45 | 3 | 0 | 98.95 | 1.24 | 0.00 |
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