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 |
YAML Metadata Warning: empty or missing yaml metadata in repo card
Check out the documentation for more information.
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: