The XyloTron: Flexible, Open-Source, Image-Based Macroscopic Field Identification of Wood Products
暂无分享,去创建一个
Prabu Ravindran | Alex C. Wiedenhoeft | Blaise J. Thompson | Richard K. Soares | A. Wiedenhoeft | Prabu Ravindran | Richard Soares | Blaise J. Thompson
[1] Leslie N. Smith,et al. A disciplined approach to neural network hyper-parameters: Part 1 - learning rate, batch size, momentum, and weight decay , 2018, ArXiv.
[2] Nikolaos Grammalidis,et al. Wood species recognition through multidimensional texture analysis , 2018, Comput. Electron. Agric..
[3] Graham W. Taylor,et al. Improved Regularization of Convolutional Neural Networks with Cutout , 2017, ArXiv.
[4] Prabu Ravindran,et al. Image Based Identification of Ghanaian Timbers Using the XyloTron: Opportunities, Risks and Challenges , 2019, ArXiv.
[5] Jimmy Ba,et al. Adam: A Method for Stochastic Optimization , 2014, ICLR.
[6] Silvana Nisgoski,et al. WOOD AND CHARCOAL IDENTIFICATION OF FIVE SPECIES FROM THE MISCELLANEOUS GROUP KNOWN IN BRAZIL AS “Angelim” BY NEAR-IR AND WOOD ANATOMY , 2016 .
[7] B. G. D. Andrade,et al. Machine vision for field-level wood identification , 2020 .
[8] John C. Hermanson,et al. The XyloScope—A field-deployable macroscopic digital imaging device for wood , 2019 .
[9] Luiz Eduardo Soares de Oliveira,et al. Forest species recognition using macroscopic images , 2014, Machine Vision and Applications.
[10] F. Pinto,et al. Potential of Texture Analysis for Charcoal Classification , 2019, Floresta e Ambiente.
[11] J. V. Dam. The charcoal transition: greening the charcoal value chain to mitigate climate change and improve local livelihoods. , 2017 .
[12] M. Nalls,et al. Genome-Wide Association Study of Retinopathy in Individuals without Diabetes , 2013, PloS one.
[13] Marzuki Khalid,et al. DESIGN OF AN INTELLIGENT WOOD SPECIES RECOGNITION SYSTEM , 2008 .
[14] Alex C. Wiedenhoeft,et al. Classification of CITES-listed and other neotropical Meliaceae wood images using convolutional neural networks , 2018, Plant Methods.
[15] A. Crivellaro,et al. Atlas of Macroscopic Wood Identification: With a Special Focus on Timbers Used in Europe and CITES-listed Species , 2019 .
[16] Peter Gasson,et al. How precise can wood identification be? Wood anatomy’s role in support of the legal timber trade, especially cites , 2011 .
[17] Jeremy Howard,et al. fastai: A Layered API for Deep Learning , 2020, Inf..
[18] Hang-jun Wang,et al. Wood Recognition Using Image Texture Features , 2013, PloS one.
[19] Alex C Wiedenhoeft,et al. Fraud and misrepresentation in retail forest products exceeds U.S. forensic wood science capacity , 2019, PloS one.
[20] Yafang Yin,et al. Forensic timber identification: It's time to integrate disciplines to combat illegal logging , 2015 .
[21] Yong Haur Tay,et al. MyWood-ID: Automated Macroscopic Wood Identification System using Smartphone and macro-lens , 2018 .
[22] Michael S. Bernstein,et al. ImageNet Large Scale Visual Recognition Challenge , 2014, International Journal of Computer Vision.
[23] Alex C. Wiedenhoeft,et al. Comparison of two forensic wood identification technologies for ten Meliaceae woods: computer vision versus mass spectrometry , 2020, Wood Science and Technology.
[24] E. Goldsmith. The Convention on International Trade in Endangered Species of Wild Fauna and Flora. , 1978, Journal of medical primatology.
[25] Jian Sun,et al. Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification , 2015, 2015 IEEE International Conference on Computer Vision (ICCV).
[26] John C. Hermanson,et al. A brief review of machine vision in the context of automated wood identification systems , 2011 .