EcoCropsAID: Economic Crops Aerial Image Dataset for Land Use Classification
- URL: http://arxiv.org/abs/2411.02762v1
- Date: Tue, 05 Nov 2024 03:14:36 GMT
- Title: EcoCropsAID: Economic Crops Aerial Image Dataset for Land Use Classification
- Authors: Sangdaow Noppitak, Emmanuel Okafor, Olarik Surinta,
- Abstract summary: The EcoCropsAID dataset is a comprehensive collection of 5,400 aerial images captured between 2014 and 2018 using the Google Earth application.
This dataset focuses on five key economic crops in Thailand: rice, sugarcane, cassava, rubber, and longan.
- Score: 0.0
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- Abstract: The EcoCropsAID dataset is a comprehensive collection of 5,400 aerial images captured between 2014 and 2018 using the Google Earth application. This dataset focuses on five key economic crops in Thailand: rice, sugarcane, cassava, rubber, and longan. The images were collected at various crop growth stages: early cultivation, growth, and harvest, resulting in significant variability within each category and similarities across different categories. These variations, coupled with differences in resolution, color, and contrast introduced by multiple remote imaging sensors, present substantial challenges for land use classification. The dataset is an interdisciplinary resource that spans multiple research domains, including remote sensing, geoinformatics, artificial intelligence, and computer vision. The unique features of the EcoCropsAID dataset offer opportunities for researchers to explore novel approaches, such as extracting spatial and temporal features, developing deep learning architectures, and implementing transformer-based models. The EcoCropsAID dataset provides a valuable platform for advancing research in land use classification, with implications for optimizing agricultural practices and enhancing sustainable development. This study explicitly investigates the use of deep learning algorithms to classify economic crop areas in northeastern Thailand, utilizing satellite imagery to address the challenges posed by diverse patterns and similarities across categories.
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