SparseCraft: Few-Shot Neural Reconstruction through Stereopsis Guided Geometric Linearization
Paper
• 2407.14257 • Published
• 5
psnr float64 10.8 30.9 | average_vgg float64 0.04 0.28 | lpips_alex float64 0.04 0.34 | masked_lpips_vgg float64 0.02 0.29 | ssim float64 0.49 0.94 | masked_psnr float64 12.1 29.7 | masked_ssim float64 0.58 0.97 | masked_average_vgg float64 0.02 0.21 | lpips_vgg float64 0.11 0.38 | masked_average_alex float64 0.01 0.2 | average_alex float64 0.03 0.27 | masked_lpips_alex float64 0.01 0.21 |
|---|---|---|---|---|---|---|---|---|---|---|---|
15.612605 | 0.182912 | 0.250766 | 0.110639 | 0.647386 | 19.720907 | 0.844382 | 0.091308 | 0.349011 | 0.083099 | 0.164105 | 0.079593 |
23.136719 | 0.089039 | 0.237383 | 0.116084 | 0.827529 | 21.450104 | 0.906795 | 0.065839 | 0.328666 | 0.067094 | 0.079956 | 0.123028 |
26.953545 | 0.061328 | 0.147889 | 0.064454 | 0.855635 | 25.483364 | 0.906916 | 0.041913 | 0.246764 | 0.037565 | 0.051993 | 0.045019 |
13.42104 | 0.232605 | 0.281022 | 0.292008 | 0.485001 | 14.469901 | 0.577335 | 0.189938 | 0.381917 | 0.170937 | 0.209752 | 0.213411 |
20.332878 | 0.090468 | 0.114014 | 0.030439 | 0.888065 | 23.640903 | 0.956012 | 0.031614 | 0.178288 | 0.027801 | 0.078152 | 0.020702 |
15.832437 | 0.156163 | 0.171201 | 0.147175 | 0.695472 | 17.465902 | 0.76982 | 0.110531 | 0.245631 | 0.096954 | 0.138636 | 0.099359 |
17.168257 | 0.133136 | 0.162101 | 0.101384 | 0.751055 | 23.259663 | 0.831322 | 0.059638 | 0.227315 | 0.050964 | 0.119059 | 0.063112 |
16.05372 | 0.155693 | 0.164555 | 0.18322 | 0.684855 | 18.277168 | 0.755703 | 0.112182 | 0.253515 | 0.096716 | 0.134952 | 0.117107 |
14.607919 | 0.177269 | 0.224431 | 0.148699 | 0.663664 | 18.956442 | 0.763475 | 0.100532 | 0.248887 | 0.096491 | 0.171504 | 0.130384 |
17.286722 | 0.124715 | 0.146373 | 0.1074 | 0.778992 | 22.024189 | 0.84892 | 0.0672 | 0.207764 | 0.060776 | 0.111043 | 0.078853 |
10.782827 | 0.282848 | 0.34057 | 0.222224 | 0.527205 | 12.067881 | 0.673081 | 0.207727 | 0.376662 | 0.199453 | 0.273651 | 0.196358 |
26.00028 | 0.072439 | 0.182626 | 0.046619 | 0.778757 | 26.335566 | 0.931163 | 0.034106 | 0.282038 | 0.031497 | 0.062867 | 0.035525 |
20.721743 | 0.080817 | 0.100333 | 0.034019 | 0.887107 | 22.658798 | 0.941635 | 0.036364 | 0.162234 | 0.033724 | 0.068766 | 0.026959 |
19.087677 | 0.105109 | 0.119125 | 0.094617 | 0.786322 | 22.366161 | 0.847124 | 0.063304 | 0.18924 | 0.055618 | 0.090138 | 0.062936 |
18.605896 | 0.106482 | 0.158349 | 0.041696 | 0.854243 | 20.099861 | 0.929528 | 0.049473 | 0.197407 | 0.046761 | 0.098808 | 0.035428 |
21.054716 | 0.09939 | 0.140906 | 0.060436 | 0.785014 | 27.103441 | 0.915542 | 0.033921 | 0.249205 | 0.026554 | 0.082291 | 0.028559 |
25.612026 | 0.063554 | 0.148581 | 0.064783 | 0.869743 | 23.89645 | 0.935976 | 0.043517 | 0.2346 | 0.044266 | 0.054655 | 0.067813 |
27.471127 | 0.053152 | 0.103209 | 0.053083 | 0.864302 | 26.920633 | 0.9171 | 0.035283 | 0.190299 | 0.031339 | 0.043577 | 0.03537 |
16.743391 | 0.144037 | 0.158867 | 0.171084 | 0.677456 | 17.66081 | 0.731082 | 0.118028 | 0.231358 | 0.104542 | 0.12749 | 0.118222 |
25.522343 | 0.046451 | 0.05167 | 0.027167 | 0.929437 | 26.165056 | 0.960814 | 0.02588 | 0.134786 | 0.021705 | 0.034399 | 0.0159 |
17.752598 | 0.115163 | 0.115291 | 0.097736 | 0.77778 | 21.171738 | 0.83991 | 0.06976 | 0.180864 | 0.059167 | 0.099873 | 0.059163 |
22.086767 | 0.077259 | 0.093023 | 0.083733 | 0.845673 | 24.96306 | 0.879685 | 0.047236 | 0.167984 | 0.040218 | 0.064136 | 0.051194 |
18.210844 | 0.118349 | 0.127605 | 0.139301 | 0.761475 | 19.401304 | 0.808443 | 0.093361 | 0.198977 | 0.081856 | 0.102465 | 0.093513 |
17.597433 | 0.118843 | 0.154948 | 0.114638 | 0.790134 | 19.841152 | 0.841538 | 0.081607 | 0.196178 | 0.077975 | 0.110439 | 0.099185 |
23.41309 | 0.063362 | 0.076208 | 0.073158 | 0.869683 | 25.410969 | 0.899182 | 0.045388 | 0.140009 | 0.039713 | 0.052644 | 0.047994 |
16.915365 | 0.117634 | 0.109895 | 0.080209 | 0.804557 | 20.234909 | 0.86625 | 0.068283 | 0.161282 | 0.060208 | 0.105264 | 0.054518 |
29.438812 | 0.050774 | 0.110009 | 0.031058 | 0.837293 | 28.244579 | 0.943626 | 0.026617 | 0.21047 | 0.024296 | 0.041571 | 0.02253 |
25.627495 | 0.045361 | 0.051938 | 0.026855 | 0.924561 | 25.480103 | 0.956219 | 0.026121 | 0.123718 | 0.023517 | 0.034439 | 0.019493 |
22.56492 | 0.071248 | 0.073708 | 0.07185 | 0.837402 | 25.058378 | 0.878737 | 0.048758 | 0.148793 | 0.041458 | 0.057079 | 0.042113 |
25.626848 | 0.045479 | 0.056164 | 0.026323 | 0.928316 | 24.396992 | 0.956843 | 0.028243 | 0.125018 | 0.024645 | 0.034923 | 0.017655 |
26.410034 | 0.060401 | 0.095297 | 0.049022 | 0.846149 | 29.095221 | 0.932106 | 0.026092 | 0.226345 | 0.019701 | 0.045443 | 0.020847 |
29.450077 | 0.039386 | 0.086091 | 0.053405 | 0.920402 | 26.204363 | 0.955126 | 0.030649 | 0.183023 | 0.029983 | 0.030647 | 0.049967 |
30.5319 | 0.03656 | 0.078075 | 0.048557 | 0.906829 | 28.347792 | 0.935646 | 0.027262 | 0.167928 | 0.023551 | 0.028301 | 0.031199 |
18.659431 | 0.110866 | 0.122441 | 0.141959 | 0.743151 | 19.224331 | 0.782055 | 0.092943 | 0.194633 | 0.080352 | 0.09519 | 0.091708 |
25.845377 | 0.046457 | 0.047954 | 0.021472 | 0.940632 | 28.711506 | 0.972658 | 0.017356 | 0.130252 | 0.013222 | 0.033608 | 0.009471 |
21.673559 | 0.073949 | 0.07089 | 0.07521 | 0.843405 | 23.050653 | 0.876575 | 0.051866 | 0.13965 | 0.042564 | 0.059429 | 0.041376 |
24.568323 | 0.054584 | 0.060801 | 0.061452 | 0.891342 | 27.120859 | 0.911278 | 0.033603 | 0.133057 | 0.027695 | 0.042453 | 0.033869 |
21.772087 | 0.073561 | 0.073703 | 0.092905 | 0.847974 | 23.258148 | 0.882287 | 0.054619 | 0.141073 | 0.044463 | 0.059724 | 0.049437 |
20.398712 | 0.089413 | 0.114969 | 0.089242 | 0.838152 | 22.643755 | 0.880764 | 0.056164 | 0.159939 | 0.051098 | 0.080691 | 0.066323 |
25.883759 | 0.044234 | 0.050278 | 0.056916 | 0.9106 | 27.849375 | 0.929649 | 0.029853 | 0.114235 | 0.024807 | 0.033921 | 0.032889 |
21.301495 | 0.068154 | 0.065986 | 0.064017 | 0.875362 | 22.729145 | 0.89857 | 0.048232 | 0.120095 | 0.041211 | 0.05591 | 0.040804 |
30.918505 | 0.037406 | 0.070411 | 0.024552 | 0.878878 | 29.683823 | 0.961235 | 0.01852 | 0.165441 | 0.016265 | 0.02844 | 0.01625 |
25.91861 | 0.043211 | 0.045749 | 0.021703 | 0.938527 | 27.002739 | 0.967375 | 0.020198 | 0.116586 | 0.017476 | 0.031759 | 0.013938 |
25.26935 | 0.051299 | 0.052994 | 0.055248 | 0.881623 | 28.48703 | 0.914924 | 0.029411 | 0.125082 | 0.022747 | 0.038771 | 0.025084 |
26.47788 | 0.040547 | 0.044629 | 0.019798 | 0.938763 | 27.061953 | 0.96517 | 0.020027 | 0.112714 | 0.016492 | 0.029942 | 0.011231 |
We provide preprocessed DTU data and results for the tasks of novel view synthesis and surface reconstruction.
It contains the following directories:
sparsecraft_data
├── nvs # Novel View Synthesis task data and results
│ └── mvs_data
│ ├── scan103
│ ├── ...
│ └── results # Results for training using 3, 6, and 9 views
│ ├── 3v
│ │ ├── scan103
│ │ ├── ...
│ ├── 6v
│ │ ├── scan103
│ │ ├── ...
│ └── 9v
│ ├── scan103
│ ├── ...
└── reconstruction # Surface Reconstruction task data and results
└── mvs_data # Surface reconstruction data uses a different set of scans and views than the novel view synthesis task
├── set0
│ ├── scan105
│ ├── ...
└── set1
├── scan105
├── ...
└── results
├── set0
│ ├── scan105
│ ├── ...
└── set1
├── scan105
Note
The DTU dataset was preprocessed as follows:
scripts that you can run using the following command. Note that you will need to have Colmap installed on your machine: