MIROC-ESM 2010: Model description and basic results of CMIP5-20c3m experiments S Watanabe, T Hajima, K Sudo, T Nagashima, T Takemura, H Okajima, ... Geoscientific Model Development 4 (4), 845-872, 2011 | 1497* | 2011 |
High sensitivity of peat decomposition to climate change through water-table feedback T Ise, AL Dunn, SC Wofsy, PR Moorcroft Nature Geoscience 1 (11), 763-766, 2008 | 468 | 2008 |
Early stage litter decomposition across biomes I Djukic, S Kepfer-Rojas, IK Schmidt, KS Larsen, C Beier, B Berg, ... Science of the total environment 628, 1369-1394, 2018 | 280 | 2018 |
Explainable identification and mapping of trees using UAV RGB image and deep learning M Onishi, T Ise Scientific reports 11 (1), 903, 2021 | 202 | 2021 |
The global-scale temperature and moisture dependencies of soil organic carbon decomposition: an analysis using a mechanistic decomposition model T Ise, PR Moorcroft Biogeochemistry 80, 217-231, 2006 | 194 | 2006 |
Comparison of modeling approaches for carbon partitioning: impact on estimates of global net primary production and equilibrium biomass of woody vegetation from MODIS GPP T Ise, CM Litton, CP Giardina, A Ito Journal of Geophysical Research: Biogeosciences 115 (G4), 2010 | 92 | 2010 |
Automatic classification of trees using a UAV onboard camera and deep learning M Onishi, T Ise arXiv preprint arXiv:1804.10390, 2018 | 62 | 2018 |
Effect of plant dynamic processes on African vegetation responses to climate change: Analysis using the spatially explicit individual‐based dynamic global vegetation model … H Sato, T Ise Journal of Geophysical Research: Biogeosciences 117 (G3), 2012 | 62 | 2012 |
Forecasting climatic trends using neural networks: an experimental study using global historical data T Ise, Y Oba Frontiers in Robotics and AI 6, 446979, 2019 | 39 | 2019 |
Identifying the vegetation type in Google Earth images using a convolutional neural network: a case study for Japanese bamboo forests S Watanabe, K Sumi, T Ise BMC ecology 20, 1-14, 2020 | 35 | 2020 |
Classifying 3 Moss Species by Deep Learning, Using the “Chopped Picture” Method M Ise, T., Minagawa, M., Onishi Open Journal of Ecology 8 (3), 166-173, 2018 | 35* | 2018 |
Simulating boreal forest dynamics from perspectives of ecophysiology, resource availability, and climate change T Ise, PR Moorcroft Ecological research 25, 501-511, 2010 | 26 | 2010 |
Explainable deep learning reproduces a ‘professional eye’on the diagnosis of internal disorders in persimmon fruit T Akagi, M Onishi, K Masuda, R Kuroki, K Baba, K Takeshita, T Suzuki, ... Plant and Cell Physiology 61 (11), 1967-1973, 2020 | 22 | 2020 |
Practicality and robustness of tree species identification using UAV RGB image and deep learning in temperate forest in Japan M Onishi, S Watanabe, T Nakashima, T Ise Remote Sensing 14 (7), 1710, 2022 | 21 | 2022 |
Reconciliation of top-down and bottom-up CO2 fluxes in Siberian larch forest K Takata, PK Patra, A Kotani, J Mori, D Belikov, K Ichii, T Saeki, T Ohta, ... Environmental Research Letters 12 (12), 125012, 2017 | 20 | 2017 |
Climate change, allowable emission, and earth system response to representative concentration pathway scenarios T Hajima, T Ise, K Tachiiri, E Kato, S Watanabe, M Kawamiya Journal of the Meteorological Society of Japan. Ser. II 90 (3), 417-434, 2012 | 16 | 2012 |
Temporal trends and spatial distribution of research topics in anthropogenic marine debris study: Topic modelling using latent Dirichlet allocation D Tomojiri, K Takaya, T Ise Marine Pollution Bulletin 182, 113917, 2022 | 13 | 2022 |
Unmanned aerial vehicles and deep learning for assessment of anthropogenic marine debris on beaches on an island in a semi-enclosed sea in Japan K Takaya, A Shibata, Y Mizuno, T Ise Environmental Research Communications 4 (1), 015003, 2022 | 13 | 2022 |
Difference of double Shockley-type stacking faults expansion in highly nitrogen-doped and nitrogen-boron co-doped n-type 4H-SiC crystals H Suo, K Eto, T Ise, Y Tokuda, H Osawa, H Tsuchida, T Kato, H Okumura Journal of Crystal Growth 468, 879-882, 2017 | 13 | 2017 |
The GRENE-TEA model intercomparison project (GTMIP): overview and experiment protocol for Stage 1 S Miyazaki, K Saito, J Mori, T Yamazaki, T Ise, H Arakida, T Hajima, ... Geoscientific Model Development 8 (9), 2841-2856, 2015 | 13 | 2015 |