| CARVIEW |
Select Language
HTTP/2 301
server: GitHub.com
content-type: text/html
location: https://richzhang.github.io/InteractiveColorization/
x-github-request-id: 6548:21D6A4:897D80:9A4E76:695239BC
accept-ranges: bytes
age: 0
date: Mon, 29 Dec 2025 08:20:13 GMT
via: 1.1 varnish
x-served-by: cache-bom-vanm7210068-BOM
x-cache: MISS
x-cache-hits: 0
x-timer: S1766996413.146797,VS0,VE200
vary: Accept-Encoding
x-fastly-request-id: b5079da6a1107c9a2a0d5c4a3e7d8377825e3bcf
content-length: 162
HTTP/2 200
server: GitHub.com
content-type: text/html; charset=utf-8
last-modified: Sun, 04 Oct 2020 21:05:41 GMT
access-control-allow-origin: *
etag: W/"5f7a3925-46ba"
expires: Mon, 29 Dec 2025 08:30:13 GMT
cache-control: max-age=600
content-encoding: gzip
x-proxy-cache: MISS
x-github-request-id: D678:328FD3:888FAB:995EC4:695239BD
accept-ranges: bytes
date: Mon, 29 Dec 2025 08:20:13 GMT
via: 1.1 varnish
age: 0
x-served-by: cache-bom-vanm7210068-BOM
x-cache: MISS
x-cache-hits: 0
x-timer: S1766996413.376314,VS0,VE214
vary: Accept-Encoding
x-fastly-request-id: 9ce8dc77d713c8138b1b814753ccf51b1b49bf2e
content-length: 5070
Real-Time User-Guided Image Colorization with Learned Deep Priors
Real-Time User-Guided Image Colorization with Learned Deep Priors
University of California, Berkeley
mp4
We trained our system on 1.3M color photos, which were made grayscale "synthetically" (by removing the color components). Here, we show some examples on legacy grayscale photographs. This is Figure 10 in our full paper.
We show all of the results from our user study. Each user spent just 1 minute on each image. Each of the 28 users was given minimal training (short 2 minute explanation, and a few questions), and given 10 images to colorize. We show all 280 examples in the link below.
This is an extension of Figures 4 & 5 of our paper. Please see Section 4.2 of our paper for additional details.
We show additional examples of our network incorporating global histogram information. Please see Sections 3.3 and 4.4 for additional details. This is an extension of Figure 9 in our paper.
|
|
|
|
|
|
|
|
|
|
|
|
|
|
Results on Legacy Photos
![]() |
|
Additional Results
![]() |
|
|
We show additional examples of our network incorporating global histogram information. Please see Sections 3.3 and 4.4 for additional details. This is an extension of Figure 9 in our paper.
![]() |
|
|
Try the network
![]() |
![]() |
R. Zhang*, J.Y. Zhu*, P. Isola, X. Geng, A. S. Lin, T. Yu, A. A. Efros. Real-Time User-Guided Image Colorization with Learned Deep Priors. In SIGGRAPH, 2017. (hosted on arXiv) |
Related and Concurrent WorkR. Zhang, P. Isola, A. A. Efros. Colorful Image Colorization. In ECCV, 2016. [PDF] [Website] [Demo] G. Larsson, M. Maire, and G. Shakhnarovich. Learning Representations for Automatic Colorization. In ECCV, 2016. [PDF] [Website] S. Iizuka, E. Simo-Serra, and H. Ishikawa. Let there be Color!: Joint End-to-end Learning of Global and Local Image Priors for Automatic Image Colorization with Simultaneous Classification. In SIGGRAPH, 2016. [PDF] [Website] P. Isola, J.Y. Zhu, T. Zhou, A. A. Efros. Image to Image Translation with Conditional Adversarial Networks. In CVPR, 2017. [PDF] [Website] [Demo] P. Sangkloy, J. Lu, C. Fang, F. Yu, J. Hays. Scribbler: Controlling Deep Image Synthesis with Sketch and Color. In CVPR, 2017. [PDF] [Website] J.Y. Zhu, P. Krähenbühl, E. Shechtman, A. A. Efros. Generative Visual Manipulation on the Natural Image Manifold. In ECCV, 2016. [PDF] [Website] K. Frans. Outline Colorization through Tandem Adversarial Networks. In Arxiv, 2017. [PDF] [Demo] Preferred Networks, Inc. PaintsChainer. [Demo] |
Acknowledgements |




