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Thailand Asset Value Estimation Using Aerial or Satellite Imagery

Author

Listed:
  • Supawich Puengdang
  • Worawate Ausawalaithong
  • Phiratath Nopratanawong
  • Narongdech Keeratipranon
  • Chayut Wongkamthong

Abstract

Real estate is a critical sector in Thailand's economy, which has led to a growing demand for a more accurate land price prediction approach. Traditional methods of land price prediction, such as the weighted quality score (WQS), are limited due to their reliance on subjective criteria and their lack of consideration for spatial variables. In this study, we utilize aerial or satellite imageries from Google Map API to enhance land price prediction models from the dataset provided by Kasikorn Business Technology Group (KBTG). We propose a similarity-based asset valuation model that uses a Siamese-inspired Neural Network with pretrained EfficientNet architecture to assess the similarity between pairs of lands. By ensembling deep learning and tree-based models, we achieve an area under the ROC curve (AUC) of approximately 0.81, outperforming the baseline model that used only tabular data. The appraisal prices of nearby lands with similarity scores higher than a predefined threshold were used for weighted averaging to predict the reasonable price of the land in question. At 20\% mean absolute percentage error (MAPE), we improve the recall from 59.26\% to 69.55\%, indicating a more accurate and reliable approach to predicting land prices. Our model, which is empowered by a more comprehensive view of land use and environmental factors from aerial or satellite imageries, provides a more precise, data-driven, and adaptive approach for land valuation in Thailand.

Suggested Citation

  • Supawich Puengdang & Worawate Ausawalaithong & Phiratath Nopratanawong & Narongdech Keeratipranon & Chayut Wongkamthong, 2023. "Thailand Asset Value Estimation Using Aerial or Satellite Imagery," Papers 2307.08650, arXiv.org, revised Aug 2023.
  • Handle: RePEc:arx:papers:2307.08650
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    File URL: http://arxiv.org/pdf/2307.08650
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