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Original Articles

Assessment of Potato Phenological Characteristics Using MODIS-Derived NDVI and LAI Information

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Pages 454-470 | Published online: 15 May 2013

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Diego Gómez, Pablo Salvador, Julia Sanz & José Luis Casanova. (2021) New spectral indicator Potato Productivity Index based on Sentinel-2 data to improve potato yield prediction: a machine learning approach. International Journal of Remote Sensing 42:9, pages 3426-3444.
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Ji Ge, Hong Zhang, Chunling Sun, Lu Xu, Mingyang Song, Jingling Jiang & Chao Wang. (2023) A Rapid Rice Growth Monitoring Method Based on Sentinel-L SAR Data and Deep Learning. A Rapid Rice Growth Monitoring Method Based on Sentinel-L SAR Data and Deep Learning.
Tingting He, Maoxin Zhang, Wu Xiao, Ge Zhai, Yan Wang, Andong Guo & Cifang Wu. (2023) Quantitative analysis of abandonment and grain production loss under armed conflict in Ukraine. Journal of Cleaner Production 412, pages 137367.
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Marcin Siłuch, Piotr Bartmiński & Wojciech Zgłobicki. (2022) Remote Sensing in Studies of the Growing Season: A Bibliometric Analysis. Remote Sensing 14:6, pages 1331.
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Joseph K. Mhango, W. Edwin Harris & James M. Monaghan. (2021) Relationships between the Spatio-Temporal Variation in Reflectance Data from the Sentinel-2 Satellite and Potato (Solanum Tuberosum L.) Yield and Stem Density. Remote Sensing 13:21, pages 4371.
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Imran Hossain Newton, G. M. Tarekul Islam, Akm Saiful Islam, Sadmina Razzaque & Sujit Kumar Bala. (2021) A conjugate application of MODIS/Terra data and empirical method to assess reference evapotranspiration for the southwest region of Bangladesh. Environmental Earth Sciences 80:6.
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Megan Blatchford, Poolad Karimi, W.G.M. Bastiaanssen & Hamideh Nouri. (2018) From Global Goals to Local Gains—A Framework for Crop Water Productivity. ISPRS International Journal of Geo-Information 7:11, pages 414.
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Imran Hossain Newton, A. F. M Tariqul Islam, A. K. M. Saiful Islam, G. M. Tarekul Islam, Anika Tahsin & Sadmina Razzaque. (2018) Yield Prediction Model for Potato Using Landsat Time Series Images Driven Vegetation Indices. Remote Sensing in Earth Systems Sciences 1:1-2, pages 29-38.
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Toshihiro Sakamoto. (2018) Refined shape model fitting methods for detecting various types of phenological information on major U.S. crops. ISPRS Journal of Photogrammetry and Remote Sensing 138, pages 176-192.
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R. Quiroz, H. Loayza, C. Barreda, C. Gavilán, A. Posadas & D.A. Ramírez. (2017) Linking process-based potato models with light reflectance data: Does model complexity enhance yield prediction accuracy?. European Journal of Agronomy 82, pages 104-112.
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Ho-Young Ban, Kwang Kim, No-Wook Park & Byun-Woo Lee. (2016) Using MODIS Data to Predict Regional Corn Yields. Remote Sensing 9:1, pages 16.
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Nari Kim, Jaeil Cho, Sungwook Hong, Kyung-Ja Ha, Ryosuke Shibasaki & Yang-Won Lee. (2016) Statistical estimation of crop yields for the Midwestern United States using satellite images, climate datasets, and soil property maps. Korean Journal of Remote Sensing 32:4, pages 383-401.
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Caleb De Bernardis, Fernando Vicente-Guijalba, Tomas Martinez-Marin & Juan M. Lopez-Sanchez. (2016) Contribution to Real-Time Estimation of Crop Phenological States in a Dynamical Framework Based on NDVI Time Series: Data Fusion With SAR and Temperature. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 9:8, pages 3512-3523.
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Caleb De Bernardis, Fernando Vicente-Guijalba, Tomas Martinez-Marin & Juan Lopez-Sanchez. (2016) Particle Filter Approach for Real-Time Estimation of Crop Phenological States Using Time Series of NDVI Images. Remote Sensing 8:7, pages 610.
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Lei Jiang, Songhao Shang, Yuting Yang & Huade Guan. (2016) Mapping interannual variability of maize cover in a large irrigation district using a vegetation index – phenological index classifier. Computers and Electronics in Agriculture 123, pages 351-361.
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P. Monneveux, D. A. Ramírez, M. Awais Khan, R. M. Raymundo, H. Loayza & R. Quiroz. (2014) Drought and Heat Tolerance Evaluation in Potato (Solanum tuberosum L.). Potato Research 57:3-4, pages 225-247.
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Lin Chu, Gao-huan Liu, Chong Huang, Qing-sheng Liu & Lin Chu. (2014) Phenology detection of winter wheat in the Yellow River delta using MODIS NDVI time-series data. Phenology detection of winter wheat in the Yellow River delta using MODIS NDVI time-series data.
Toshihiro Sakamoto, Anatoly A. Gitelson, Anthony L. Nguy-Robertson, Timothy J. Arkebauer, Brian D. Wardlow, Andrew E. Suyker, Shashi B. Verma & Michio Shibayama. (2012) An alternative method using digital cameras for continuous monitoring of crop status. Agricultural and Forest Meteorology 154-155, pages 113-126.
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Hu Zhao, Zhengwei Yang, Liping Di & Zhiyuan Pei. 2012. Computer and Computing Technologies in Agriculture V. Computer and Computing Technologies in Agriculture V 135 150 .
Toshihiro Sakamoto, Brian D. Wardlow, Anatoly A. Gitelson, Shashi B. Verma, Andrew E. Suyker & Timothy J. Arkebauer. (2010) A Two-Step Filtering approach for detecting maize and soybean phenology with time-series MODIS data. Remote Sensing of Environment 114:10, pages 2146-2159.
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Hu Zhao, Zhengwei Yang, Liping Di, Lin Li & Haihong Zhu. (2009) Crop phenology date estimation based on NDVI derived from the reconstructed MODIS daily surface reflectance data. Crop phenology date estimation based on NDVI derived from the reconstructed MODIS daily surface reflectance data.

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