Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods
Here we proposed two datasets for benchmarking single-image dehazing (haze removal) methods in both day and night conditions: "Night-haze" and "Night-haze-ext". "Night-haze" features: - real hazy, haze-free images and its corresponding depth maps, taken indoors; - 2 sce...
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creator | Andrei Filin |
description | Here we proposed two datasets for benchmarking single-image dehazing (haze removal) methods in both day and night conditions: "Night-haze" and "Night-haze-ext".
"Night-haze" features:
- real hazy, haze-free images and its corresponding depth maps, taken indoors;
- 2 scenes – one with simpler objects and the other with more complex objects and with the presences of localized light sources;
- 4 haze density levels – from absent to heavy haze;
- 4 lighting levels – from sufficient to weak lighting (which are try to simulate day and nighttime lighting);
- 32 images and depth maps in total.
"Night-haze-ext" has similar features, but:
- increased depth of scenes;
- increased the number of haze density levels to 8;
- thermal images in addition to regular (visible) images and depth maps;
- 64 images and depth maps, 63 thermal images in total.
Folders description:
- night-haze:
- jpg: visible images, collected using Canon 2000d in .jpg format;
- raw: visible images, collected using Canon 2000d in .cr2 format;
- kinnect: files, collected using Microsoft Kinnect v2;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- realsense: files, collected using Intel RealSence d435i;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- night-haze-ext: similar to night-haze, but:
- kinnect: files in .png format in "color" and "depth" folders;
- realsense: files in .png format in "color" and "depth" folders;
- infrared: files, collected using Flir C2;
- color: visible images in .png format;
- spectrum: infrared images in .png format;
* - numpy’ arrays format (https://numpy.org/doc/stable/reference/generated/numpy.load.html)
Details about our motivation, descriptions of datasets collection processes as well as some experimental results can be found in the articles:
- Night-haze: "Filin, A., Kopylov, A., Seredin, O., & Gracheva, I. (2022, July). Hazy images dataset with localized light sources for experimental evaluation of dehazing methods. In The 6th International Workshop on Deep Learning in Computational Physics (p. 19)." (https://pos.sissa.it/429/019/pdf)
- Night-haze-ext: article in progress.
Please, use night-haze.bib and night-haze-ext.bib (see Files section) for the corresponding references. |
doi_str_mv | 10.17632/jjpcj7fy6t |
format | Dataset |
fullrecord | <record><control><sourceid>datacite_PQ8</sourceid><recordid>TN_cdi_datacite_primary_10_17632_jjpcj7fy6t</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>10_17632_jjpcj7fy6t</sourcerecordid><originalsourceid>FETCH-datacite_primary_10_17632_jjpcj7fy6t3</originalsourceid><addsrcrecordid>eNqVjjELwjAUhLM4iDr5B94u1dZCC66iODm5h2f60qSmTUki0v56UxGcXe5u-Lg7xtZZus3KIt_vmqYXTSmHIswZXnWtQqJwpANEHUC3WJOHCgN6CvDSQYGxAo0eqQIz4eDt04kISevgTp1QLbqH7mqwEiqKNVNuKShb-SWbSTSeVl9fsM35dDtekmlB6EC8d3HTDTxL-ecg_x3M_6PfWPBMpA</addsrcrecordid><sourcetype>Publisher</sourcetype><iscdi>true</iscdi><recordtype>dataset</recordtype></control><display><type>dataset</type><title>Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods</title><source>DataCite</source><creator>Andrei Filin</creator><creatorcontrib>Andrei Filin</creatorcontrib><description>Here we proposed two datasets for benchmarking single-image dehazing (haze removal) methods in both day and night conditions: "Night-haze" and "Night-haze-ext".
"Night-haze" features:
- real hazy, haze-free images and its corresponding depth maps, taken indoors;
- 2 scenes – one with simpler objects and the other with more complex objects and with the presences of localized light sources;
- 4 haze density levels – from absent to heavy haze;
- 4 lighting levels – from sufficient to weak lighting (which are try to simulate day and nighttime lighting);
- 32 images and depth maps in total.
"Night-haze-ext" has similar features, but:
- increased depth of scenes;
- increased the number of haze density levels to 8;
- thermal images in addition to regular (visible) images and depth maps;
- 64 images and depth maps, 63 thermal images in total.
Folders description:
- night-haze:
- jpg: visible images, collected using Canon 2000d in .jpg format;
- raw: visible images, collected using Canon 2000d in .cr2 format;
- kinnect: files, collected using Microsoft Kinnect v2;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- realsense: files, collected using Intel RealSence d435i;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- night-haze-ext: similar to night-haze, but:
- kinnect: files in .png format in "color" and "depth" folders;
- realsense: files in .png format in "color" and "depth" folders;
- infrared: files, collected using Flir C2;
- color: visible images in .png format;
- spectrum: infrared images in .png format;
* - numpy’ arrays format (https://numpy.org/doc/stable/reference/generated/numpy.load.html)
Details about our motivation, descriptions of datasets collection processes as well as some experimental results can be found in the articles:
- Night-haze: "Filin, A., Kopylov, A., Seredin, O., & Gracheva, I. (2022, July). Hazy images dataset with localized light sources for experimental evaluation of dehazing methods. In The 6th International Workshop on Deep Learning in Computational Physics (p. 19)." (https://pos.sissa.it/429/019/pdf)
- Night-haze-ext: article in progress.
Please, use night-haze.bib and night-haze-ext.bib (see Files section) for the corresponding references.</description><identifier>DOI: 10.17632/jjpcj7fy6t</identifier><language>eng</language><publisher>Mendeley</publisher><creationdate>2023</creationdate><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>776,1887</link.rule.ids><linktorsrc>$$Uhttps://commons.datacite.org/doi.org/10.17632/jjpcj7fy6t$$EView_record_in_DataCite.org$$FView_record_in_$$GDataCite.org$$Hfree_for_read</linktorsrc></links><search><creatorcontrib>Andrei Filin</creatorcontrib><title>Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods</title><description>Here we proposed two datasets for benchmarking single-image dehazing (haze removal) methods in both day and night conditions: "Night-haze" and "Night-haze-ext".
"Night-haze" features:
- real hazy, haze-free images and its corresponding depth maps, taken indoors;
- 2 scenes – one with simpler objects and the other with more complex objects and with the presences of localized light sources;
- 4 haze density levels – from absent to heavy haze;
- 4 lighting levels – from sufficient to weak lighting (which are try to simulate day and nighttime lighting);
- 32 images and depth maps in total.
"Night-haze-ext" has similar features, but:
- increased depth of scenes;
- increased the number of haze density levels to 8;
- thermal images in addition to regular (visible) images and depth maps;
- 64 images and depth maps, 63 thermal images in total.
Folders description:
- night-haze:
- jpg: visible images, collected using Canon 2000d in .jpg format;
- raw: visible images, collected using Canon 2000d in .cr2 format;
- kinnect: files, collected using Microsoft Kinnect v2;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- realsense: files, collected using Intel RealSence d435i;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- night-haze-ext: similar to night-haze, but:
- kinnect: files in .png format in "color" and "depth" folders;
- realsense: files in .png format in "color" and "depth" folders;
- infrared: files, collected using Flir C2;
- color: visible images in .png format;
- spectrum: infrared images in .png format;
* - numpy’ arrays format (https://numpy.org/doc/stable/reference/generated/numpy.load.html)
Details about our motivation, descriptions of datasets collection processes as well as some experimental results can be found in the articles:
- Night-haze: "Filin, A., Kopylov, A., Seredin, O., & Gracheva, I. (2022, July). Hazy images dataset with localized light sources for experimental evaluation of dehazing methods. In The 6th International Workshop on Deep Learning in Computational Physics (p. 19)." (https://pos.sissa.it/429/019/pdf)
- Night-haze-ext: article in progress.
Please, use night-haze.bib and night-haze-ext.bib (see Files section) for the corresponding references.</description><fulltext>true</fulltext><rsrctype>dataset</rsrctype><creationdate>2023</creationdate><recordtype>dataset</recordtype><sourceid>PQ8</sourceid><recordid>eNqVjjELwjAUhLM4iDr5B94u1dZCC66iODm5h2f60qSmTUki0v56UxGcXe5u-Lg7xtZZus3KIt_vmqYXTSmHIswZXnWtQqJwpANEHUC3WJOHCgN6CvDSQYGxAo0eqQIz4eDt04kISevgTp1QLbqH7mqwEiqKNVNuKShb-SWbSTSeVl9fsM35dDtekmlB6EC8d3HTDTxL-ecg_x3M_6PfWPBMpA</recordid><startdate>20230303</startdate><enddate>20230303</enddate><creator>Andrei Filin</creator><general>Mendeley</general><scope>DYCCY</scope><scope>PQ8</scope></search><sort><creationdate>20230303</creationdate><title>Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods</title><author>Andrei Filin</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-datacite_primary_10_17632_jjpcj7fy6t3</frbrgroupid><rsrctype>datasets</rsrctype><prefilter>datasets</prefilter><language>eng</language><creationdate>2023</creationdate><toplevel>online_resources</toplevel><creatorcontrib>Andrei Filin</creatorcontrib><collection>DataCite (Open Access)</collection><collection>DataCite</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Andrei Filin</au><format>book</format><genre>unknown</genre><ristype>DATA</ristype><title>Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods</title><date>2023-03-03</date><risdate>2023</risdate><abstract>Here we proposed two datasets for benchmarking single-image dehazing (haze removal) methods in both day and night conditions: "Night-haze" and "Night-haze-ext".
"Night-haze" features:
- real hazy, haze-free images and its corresponding depth maps, taken indoors;
- 2 scenes – one with simpler objects and the other with more complex objects and with the presences of localized light sources;
- 4 haze density levels – from absent to heavy haze;
- 4 lighting levels – from sufficient to weak lighting (which are try to simulate day and nighttime lighting);
- 32 images and depth maps in total.
"Night-haze-ext" has similar features, but:
- increased depth of scenes;
- increased the number of haze density levels to 8;
- thermal images in addition to regular (visible) images and depth maps;
- 64 images and depth maps, 63 thermal images in total.
Folders description:
- night-haze:
- jpg: visible images, collected using Canon 2000d in .jpg format;
- raw: visible images, collected using Canon 2000d in .cr2 format;
- kinnect: files, collected using Microsoft Kinnect v2;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- realsense: files, collected using Intel RealSence d435i;
- color: visible images in .npy* format;
- depth: depth map in .npy* format;
- night-haze-ext: similar to night-haze, but:
- kinnect: files in .png format in "color" and "depth" folders;
- realsense: files in .png format in "color" and "depth" folders;
- infrared: files, collected using Flir C2;
- color: visible images in .png format;
- spectrum: infrared images in .png format;
* - numpy’ arrays format (https://numpy.org/doc/stable/reference/generated/numpy.load.html)
Details about our motivation, descriptions of datasets collection processes as well as some experimental results can be found in the articles:
- Night-haze: "Filin, A., Kopylov, A., Seredin, O., & Gracheva, I. (2022, July). Hazy images dataset with localized light sources for experimental evaluation of dehazing methods. In The 6th International Workshop on Deep Learning in Computational Physics (p. 19)." (https://pos.sissa.it/429/019/pdf)
- Night-haze-ext: article in progress.
Please, use night-haze.bib and night-haze-ext.bib (see Files section) for the corresponding references.</abstract><pub>Mendeley</pub><doi>10.17632/jjpcj7fy6t</doi><oa>free_for_read</oa></addata></record> |
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title | Night-haze: hazy images dataset with localized light sources for benchmarking of dehazing methods |
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