Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6920688 | Computers in Biology and Medicine | 2018 | 19 Pages |
Abstract
Although current 3D scanner technology can acquire textural images from a point model, visible seams in the image, inconvenient data acquisition and occupancy of a large space during use are points of concern for outdoor fruit models. In this paper, an SPSDW (simplification and perception based subdivision followed by down-sampling weighted average) method is proposed to balance memory usage and texture synthesis quality using a crop fruit, such as apples, as a research subject for a point-based fruit model. First, the quadtree method is improved to make splitting more efficient, and a reasonable texton descriptor is defined to promote query efficiency. Then, the color perception feature is extracted from the image for all pixels. Next, an advanced sub-division scheme and down-sampling strategy are designed to optimize memory space. Finally, a weighted oversampling method is proposed for high-quality texture mixing. This experiment demonstrates that the SPSDW method preserves the mixed texture more realistically and smoothly and preserves color memory up to 94%, 84.7% and 85.7% better than the two-dimesional processing, truncating scalar quantitative and color vision model methods, respectively.
Keywords
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Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
HuiJun Yang, Jian Chang, Dongjian He, Nan Geng, Meili Wang, JianJun Zhang, Xu Jing, Ehtzaz Chaudhry,