Journal of Graphics ›› 2026, Vol. 47 ›› Issue (3): 616-628.DOI: 10.11996/JG.j.2095-302X.2026030616
• Computer Graphics and Virtual Reality • Previous Articles Next Articles
HU Wenyu1,2, XU Hao1, QIU Xiwen1, YI Yun1,2(
)
Received:2025-11-03
Accepted:2026-03-27
Online:2026-06-30
Published:2026-06-30
Contact:
YI Yun
Supported by:CLC Number:
HU Wenyu, XU Hao, QIU Xiwen, YI Yun. Motion capture data recovery by combining zero-norm sparsity and temporal difference low rank[J]. Journal of Graphics, 2026, 47(3): 616-628.
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URL: http://www.txxb.com.cn/EN/10.11996/JG.j.2095-302X.2026030616
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.198 4 | 0.180 2 | 0.057 1 | 0.234 2 |
| TrNN | 0.165 6 | 0.085 9 | 0.049 7 | 0.140 4 |
| IRNN-LP | 0.163 7 | 0.066 7 | 0.049 8 | 0.136 1 |
| TSPN | 0.138 1 | 0.079 5 | 0.062 4 | 0.135 5 |
| LNM-QR | 0.137 7 | 0.075 7 | 0.136 9 | |
| MFF-N | 0.119 9 | 0.066 3 | 0.035 3 | 0.135 6 |
| ZTDL | 0.119 1 | 0.066 3 | 0.034 5 | 0.123 7 |
Table 1 MRMSE comparisons of various algorithms in recovering the Walk sequence
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.198 4 | 0.180 2 | 0.057 1 | 0.234 2 |
| TrNN | 0.165 6 | 0.085 9 | 0.049 7 | 0.140 4 |
| IRNN-LP | 0.163 7 | 0.066 7 | 0.049 8 | 0.136 1 |
| TSPN | 0.138 1 | 0.079 5 | 0.062 4 | 0.135 5 |
| LNM-QR | 0.137 7 | 0.075 7 | 0.136 9 | |
| MFF-N | 0.119 9 | 0.066 3 | 0.035 3 | 0.135 6 |
| ZTDL | 0.119 1 | 0.066 3 | 0.034 5 | 0.123 7 |
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.585 0 | 0.469 8 | 0.177 6 | 0.427 9 |
| TrNN | 0.453 6 | 0.352 6 | 0.168 1 | 0.415 0 |
| IRNN-LP | 0.453 5 | 0.232 5 | 0.171 2 | 0.330 5 |
| TSPN | 0.343 5 | 0.277 6 | 0.178 1 | 0.367 6 |
| LNM-QR | 0.340 1 | 0.227 4 | 0.274 9 | |
| MFF-N | 0.249 3 | 0.219 9 | 0.085 7 | 0.190 2 |
| ZTDL | 0.248 7 | 0.219 1 | 0.075 1 | 0.185 5 |
Table 2 MRMSE comparisons of various algorithms in recovering the Run sequence
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.585 0 | 0.469 8 | 0.177 6 | 0.427 9 |
| TrNN | 0.453 6 | 0.352 6 | 0.168 1 | 0.415 0 |
| IRNN-LP | 0.453 5 | 0.232 5 | 0.171 2 | 0.330 5 |
| TSPN | 0.343 5 | 0.277 6 | 0.178 1 | 0.367 6 |
| LNM-QR | 0.340 1 | 0.227 4 | 0.274 9 | |
| MFF-N | 0.249 3 | 0.219 9 | 0.085 7 | 0.190 2 |
| ZTDL | 0.248 7 | 0.219 1 | 0.075 1 | 0.185 5 |
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.377 0 | 0.322 6 | 0.162 7 | 0.320 3 |
| TrNN | 0.298 6 | 0.328 2 | 0.147 9 | 0.355 0 |
| IRNN-LP | 0.298 7 | 0.157 6 | 0.145 3 | 0.230 8 |
| TSPN | 0.231 5 | 0.154 2 | 0.166 9 | 0.231 4 |
| LNM-QR | 0.234 1 | 0.156 8 | 0.197 4 | |
| MFF-N | 0.181 5 | 0.141 3 | 0.081 6 | 0.148 4 |
| ZTDL | 0.181 5 | 0.141 2 | 0.071 1 | 0.147 6 |
Table 3 MRMSE comparisons of various algorithms in recovering the Gymnastics sequence
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.377 0 | 0.322 6 | 0.162 7 | 0.320 3 |
| TrNN | 0.298 6 | 0.328 2 | 0.147 9 | 0.355 0 |
| IRNN-LP | 0.298 7 | 0.157 6 | 0.145 3 | 0.230 8 |
| TSPN | 0.231 5 | 0.154 2 | 0.166 9 | 0.231 4 |
| LNM-QR | 0.234 1 | 0.156 8 | 0.197 4 | |
| MFF-N | 0.181 5 | 0.141 3 | 0.081 6 | 0.148 4 |
| ZTDL | 0.181 5 | 0.141 2 | 0.071 1 | 0.147 6 |
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.218 4 | 0.178 2 | 0.088 7 | 0.214 7 |
| TrNN | 0.183 2 | 0.236 5 | 0.082 8 | 0.256 5 |
| IRNN-LP | 0.183 3 | 0.118 8 | 0.080 6 | 0.188 4 |
| TSPN | 0.153 6 | 0.083 1 | 0.099 3 | 0.147 8 |
| LNM-QR | 0.158 1 | 0.091 8 | 0.144 9 | |
| MFF-N | 0.132 3 | 0.075 7 | 0.050 9 | 0.134 6 |
| ZTDL | 0.132 1 | 0.075 6 | 0.041 4 | 0.123 6 |
Table 4 MRMSE comparisons of various algorithms in recovering the Dance sequence
| 算法 | 随机噪声 | 随机缺失 | 连续缺失 | 混合污染 |
|---|---|---|---|---|
| TSMC | 0.218 4 | 0.178 2 | 0.088 7 | 0.214 7 |
| TrNN | 0.183 2 | 0.236 5 | 0.082 8 | 0.256 5 |
| IRNN-LP | 0.183 3 | 0.118 8 | 0.080 6 | 0.188 4 |
| TSPN | 0.153 6 | 0.083 1 | 0.099 3 | 0.147 8 |
| LNM-QR | 0.158 1 | 0.091 8 | 0.144 9 | |
| MFF-N | 0.132 3 | 0.075 7 | 0.050 9 | 0.134 6 |
| ZTDL | 0.132 1 | 0.075 6 | 0.041 4 | 0.123 6 |
Fig. 8 MRMSE bar chart comparisons for this paper method and four other classical algorithms under different pollution conditions ((a) Random noise; (b) Randomly missing; (c) Continuously missing; (d) Mixed noise)
| 算法 | 缺失比例/% | Basketball | Boxing | Jump |
|---|---|---|---|---|
| Transformer[ | 10 | 0.44 | 2.14 | 0.52 |
| ZTDL | 0.73 | 0.59 | 0.41 | |
| Transformer[ | 20 | 0.57 | 2.63 | 0.56 |
| ZTDL | 0.76 | 0.63 | 0.45 | |
| Transformer[ | 30 | 0.59 | 2.56 | 0.59 |
| ZTDL | 0.82 | 1.35 | 0.48 |
Table 5 MRMSE comparisons between the Transformer [25] and ZTDL methods
| 算法 | 缺失比例/% | Basketball | Boxing | Jump |
|---|---|---|---|---|
| Transformer[ | 10 | 0.44 | 2.14 | 0.52 |
| ZTDL | 0.73 | 0.59 | 0.41 | |
| Transformer[ | 20 | 0.57 | 2.63 | 0.56 |
| ZTDL | 0.76 | 0.63 | 0.45 | |
| Transformer[ | 30 | 0.59 | 2.56 | 0.59 |
| ZTDL | 0.82 | 1.35 | 0.48 |
| 算法 | ACC | ||
|---|---|---|---|
| 0.889 0 | 0.997 8 | 1 | |
| TSMC | 10.701 7 | 0.032 6 | 0.032 5 |
| TRNN | 9.603 0 | 0.028 2 | 0.027 9 |
| TSPN | 10.205 9 | 0.025 8 | 0.025 8 |
| IRNN-Lp | 6.285 2 | 0.026 2 | 0.026 1 |
| ZTDL | 10.935 7 | 0.015 0 | 0.014 8 |
Table 6 MRMSE comparisons of various algorithms with different ACC values for recovering the randomly missing Gymnastics sequence
| 算法 | ACC | ||
|---|---|---|---|
| 0.889 0 | 0.997 8 | 1 | |
| TSMC | 10.701 7 | 0.032 6 | 0.032 5 |
| TRNN | 9.603 0 | 0.028 2 | 0.027 9 |
| TSPN | 10.205 9 | 0.025 8 | 0.025 8 |
| IRNN-Lp | 6.285 2 | 0.026 2 | 0.026 1 |
| ZTDL | 10.935 7 | 0.015 0 | 0.014 8 |
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