УДК: 004.932
Investigating surface-segmentation methods when images are being compared in three-dimensional space
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Пономарев С.В. Исследование методов сегментации поверхностей при сопоставлении изображений в трехмерном пространстве // Оптический журнал. 2015. Т. 82. № 8. С. 76–83.
Ponomarev S.V. Investigating surface-segmentation methods when images are being compared in three-dimensional space [in Russian] // Opticheskii Zhurnal. 2015. V. 82. № 8. P. 76–83.
S. V. Ponomarev, "Investigating surface-segmentation methods when images are being compared in three-dimensional space," Journal of Optical Technology. 82(8), 551-556 (2015). https://doi.org/10.1364/JOT.82.000551
This paper discusses surface-segmentation methods in three-dimensional space in terms of a solution of the problem of structural comparison of images. An algorithm is presented for comparing images in three-dimensional space, and methods are considered for making the developed algorithm more stable against the picture-taking conditions. A quantitative estimate is given for the segmentation accuracy and the response rate of the methods being studied. Based of the results of the investigation, a modification of the image-comparison algorithm is proposed.
structural comparison, segmentation methods, three-dimensional space
Acknowledgements:This work was carried out with the support of the Ministry of Education and Science of the Russian Federation and with the partial state support of the leading universities of the Russian Federation (Subsidy 074-U01).
OCIS codes: 150.1135
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