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    <title>Remote Sensing on ViCoS Lab</title>
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      <title>Application of Temporal Convolutional Neural Network for the Classification of Crops on SENTINEL-2 Time Series</title>
      <link>/publications/racic2020application/</link>
      <pubDate>Mon, 01 Jan 0001 00:00:00 +0000</pubDate>
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      <title>Multi-Year Time Series Transfer Learning: Application of Early Crop Classification</title>
      <link>/publications/racic2024multi-year/</link>
      <pubDate>Mon, 01 Jan 0001 00:00:00 +0000</pubDate>
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      <description>&lt;p&gt;Crop classification is an important task in remote sensing with many applications, such as estimating yields, detecting crop diseases and pests, and ensuring food security. In this study, we combined knowledge from remote sensing, machine learning, and agriculture to investigate the application of transfer learning with a transformer model for variable length satellite image time series (SITS). The objective was to produce a map of agricultural land, reduce required interventions, and limit in-field visits. Specifically, we aimed to provide reliable agricultural land class predictions in a timely manner and quantify the necessary amount of reference parcels to achieve these outcomes. Our dataset consisted of Sentinel-2 satellite imagery and reference crop labels for Slovenia spanning over years 2019, 2020, and 2021. We evaluated adaptability through fine-tuning in a real-world scenario of early crop classification with limited up-to-date reference data. The base model trained on a different year achieved an average F1 score of 82.5% for the target year without having a reference from the target year. To increase accuracy with a new model trained from scratch, an average of 48,000 samples are required in the target year. Using transfer learning, the pre-trained models can be efficiently adapted to an unknown year, requiring less than 0.3% (1500) samples from the dataset. Building on this, we show that transfer learning can outperform the baseline in the context of early classification with only 9% of the data after 210 days in the year.&lt;/p&gt;</description>
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      <title>Towards the deep learning recognition of cultivated terraces based on Lidar data: The case of Slovenia</title>
      <link>/publications/ciglic2024towards/</link>
      <pubDate>Mon, 01 Jan 0001 00:00:00 +0000</pubDate>
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