Anatomical traits of Cryptomeria japonica tree rings studied by wavelet convolutional neural network
暂无分享,去创建一个
[1] Hang-jun Wang,et al. Wood Recognition Using Image Texture Features , 2013, PloS one.
[2] A. Rigling,et al. Wood anatomical responses of oak saplings exposed to air warming and soil drought. , 2013, Plant biology.
[3] Luiz Eduardo Soares de Oliveira,et al. A database for automatic classification of forest species , 2012, Machine Vision and Applications.
[4] R. Wimmer. Wood anatomical features in tree-rings as indicators of environmental change , 2002 .
[5] Kayoko Kobayashi,et al. Texture analysis of stereograms of diffuse-porous hardwood: identification of wood species used in Tripitaka Koreana , 2017, Journal of Wood Science.
[6] M. Carrer,et al. How does climate influence xylem morphogenesis over the growing season? Insights from long-term intra-ring anatomy in Picea abies , 2017, Annals of botany.
[7] F. Schweingruber,et al. A Technical Perspective in Modern Tree-ring Research - How to Overcome Dendroecological and Wood Anatomical Challenges , 2015, Journal of visualized experiments : JoVE.
[8] P. Cherubini,et al. Climatic signals of tree-ring width and intra-annual density fluctuations in Pinus pinaster and Pinus pinea along a latitudinal gradient in Portugal , 2014 .
[9] David G. Lowe,et al. Object recognition from local scale-invariant features , 1999, Proceedings of the Seventh IEEE International Conference on Computer Vision.
[10] P. Fonti,et al. Suitability of chestnut earlywood vessel chronologies for ecological studies. , 2004, The New phytologist.
[11] Kayoko Kobayashi,et al. Automated identification of Lauraceae by scale-invariant feature transform , 2018, Journal of Wood Science.
[12] J. Camarero,et al. EFFECTS OF A SEVERE DROUGHT ON GROWTH AND WOOD ANATOMICAL PROPERTIES OF QUERCUS FAGINEA , 2004 .
[13] M. L. Dewal,et al. Multiresolution local binary pattern variants based texture feature extraction techniques for efficient classification of microscopic images of hardwood species , 2015, Appl. Soft Comput..
[14] Kayoko Kobayashi,et al. Automated recognition of wood used in traditional Japanese sculptures by texture analysis of their low-resolution computed tomography data , 2015, Journal of Wood Science.