Yan-Fu Kuo
Affiliations: | 2011 | Purdue University, West Lafayette, IN, United States | |
2011- | National Taiwan University, Taipei, Taipei City, Taiwan |
Google:
"Yan-Fu Kuo"
BETA: Related publications
See more...
Publications
You can help our author matching system! If you notice any publications incorrectly attributed to this author, please sign in and mark matches as correct or incorrect. |
Wang YH, Hsu HC, Chou WC, et al. (2020) Automatic Identification of First-Order Veins and Corolla Contours in Three-Dimensional Floral Images. Frontiers in Plant Science. 11: 549699 |
Hsu HC, Chou WC, Kuo YF. (2020) 3D revelation of phenotypic variation, evolutionary allometry, and ancestral states of corolla shape: a case study of clade Corytholoma (subtribe Ligeriinae, family Gesneriaceae). Gigascience. 9 |
Hung T, Hsu H, Kuo Y. (2020) Quantification of petal patterns and colours of genus Sinningia (GESNERIACEAE) Biosystems Engineering. 197: 324-335 |
Tseng C, Hsieh C, Kuo Y. (2020) Automatic measurement of the body length of harvested fish using convolutional neural networks Biosystems Engineering. 189: 36-47 |
Lee C, Hsu H, Yang C, et al. (2019) Identifying Fagaceae Species in Taiwan Using Leaf Images Transactions of the Asabe. 62: 1055-1063 |
Yang H, Hsu H, Yang C, et al. (2019) Differentiating between morphologically similar species in genus Cinnamomum (Lauraceae) using deep convolutional neural networks Computers and Electronics in Agriculture. 162: 739-748 |
Han T, Kuo Y. (2018) Developing a system for three-dimensional quantification of root traits of rice seedlings Computers and Electronics in Agriculture. 152: 90-100 |
Hsu H, Hsu K, Chan C, et al. (2018) Quantifying colour and spot characteristics for the ventral petals in Sinningia speciosa Biosystems Engineering. 167: 40-50 |
Hsu HC, Wang CN, Liang CH, et al. (2017) Association between Petal Form Variation and CYC2-like Genotype in a Hybrid Line of Sinningia speciosa. Frontiers in Plant Science. 8: 558 |
Kuo TY, Chung CL, Chen SY, et al. (2016) Identifying rice grains using image analysis and sparse-representation-based classification Computers and Electronics in Agriculture. 127: 716-725 |