Thailand Asset Value Estimation Using Aerial or Satellite Imagery
- URL: http://arxiv.org/abs/2307.08650v2
- Date: Fri, 4 Aug 2023 18:03:39 GMT
- Title: Thailand Asset Value Estimation Using Aerial or Satellite Imagery
- Authors: Supawich Puengdang, Worawate Ausawalaithong, Phiratath Nopratanawong,
Narongdech Keeratipranon, Chayut Wongkamthong
- Abstract summary: 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.
We propose a similarity-based asset valuation model that uses a Siamese-inspired Neural Network with pretrained EfficientNet architecture.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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.
Related papers
- Utilizing Model Residuals to Identify Rental Properties of Interest: The
Price Anomaly Score (PAS) and Its Application to Real-time Data in Manhattan [0.0]
Drawing from data collected of all possible available properties for rent in Manhattan as of September 2023, this paper aims to strengthen our understanding of model residuals.
To harness these insights, we introduce the Price Anomaly Score (PAS), a metric capable of capturing boundaries between irregularly predicted prices.
arXiv Detail & Related papers (2023-11-29T00:14:30Z) - HarvestNet: A Dataset for Detecting Smallholder Farming Activity Using
Harvest Piles and Remote Sensing [50.4506590177605]
HarvestNet is a dataset for mapping the presence of farms in the Ethiopian regions of Tigray and Amhara during 2020-2023.
We introduce a new approach based on the detection of harvest piles characteristic of many smallholder systems.
We conclude that remote sensing of harvest piles can contribute to more timely and accurate cropland assessments in food insecure regions.
arXiv Detail & Related papers (2023-08-23T11:03:28Z) - Extracting real estate values of rental apartment floor plans using
graph convolutional networks [0.0]
We implement a graph convolutional network (GCN) for access graphs and propose a model to estimate the real estate value of access graphs as the floor plan value.
The results show that the proposed method significantly improves the accuracy of rent estimation compared to that of conventional models.
arXiv Detail & Related papers (2023-03-23T14:38:34Z) - A Coarse-to-Fine Approach for Urban Land Use Mapping Based on
Multisource Geospatial Data [4.2968261363970095]
We propose a machine learning-based approach for parcel-level urban land use mapping.
We first divide the city into built-up and non-built-up regions based on parcels generated from road networks.
We then adopt different classification strategies for parcels in different regions, and finally combine the classified results into an integrated land use map.
arXiv Detail & Related papers (2022-08-18T13:30:56Z) - End-to-end deep learning for directly estimating grape yield from
ground-based imagery [53.086864957064876]
This study demonstrates the application of proximal imaging combined with deep learning for yield estimation in vineyards.
Three model architectures were tested: object detection, CNN regression, and transformer models.
The study showed the applicability of proximal imaging and deep learning for prediction of grapevine yield on a large scale.
arXiv Detail & Related papers (2022-08-04T01:34:46Z) - Improving Visual Grounding by Encouraging Consistent Gradient-based
Explanations [58.442103936918805]
We show that Attention Mask Consistency produces superior visual grounding results than previous methods.
AMC is effective, easy to implement, and is general as it can be adopted by any vision-language model.
arXiv Detail & Related papers (2022-06-30T17:55:12Z) - High-resolution landscape-scale biomass mapping using a spatiotemporal
patchwork of LiDAR coverages [0.0]
Estimating forest aboveground biomass at fine scales has become increasingly important for greenhouse gas estimation.
Here we address common obstacles including selection of training data, the investigation of regional or coverage specific bias and error, and map patterns at multiple scales.
Our model was overall accurate (% RMSE 13-33%), had very low bias (MBE $leq$ $pm$5 Mg ha$-1$), explained most field-observed variation.
arXiv Detail & Related papers (2022-05-17T17:53:50Z) - Embedding Earth: Self-supervised contrastive pre-training for dense land
cover classification [61.44538721707377]
We present Embedding Earth a self-supervised contrastive pre-training method for leveraging the large availability of satellite imagery.
We observe significant improvements up to 25% absolute mIoU when pre-trained with our proposed method.
We find that learnt features can generalize between disparate regions opening up the possibility of using the proposed pre-training scheme.
arXiv Detail & Related papers (2022-03-11T16:14:14Z) - Country-wide Retrieval of Forest Structure From Optical and SAR
Satellite Imagery With Bayesian Deep Learning [74.94436509364554]
We propose a Bayesian deep learning approach to densely estimate forest structure variables at country-scale with 10-meter resolution.
Our method jointly transforms Sentinel-2 optical images and Sentinel-1 synthetic aperture radar images into maps of five different forest structure variables.
We train and test our model on reference data from 41 airborne laser scanning missions across Norway.
arXiv Detail & Related papers (2021-11-25T16:21:28Z) - Towards robust and speculation-reduction real estate pricing models
based on a data-driven strategy [0.0]
We propose a data-driven real estate pricing model based on machine learning methods to estimate prices reducing human bias.
We test the model with 178,865 flats listings from Bogot'a, collected from 2016 to 2020.
Results show that the proposed state-of-the-art model is robust and accurate in estimating real estate prices.
arXiv Detail & Related papers (2020-11-26T15:54:07Z) - Rethinking Localization Map: Towards Accurate Object Perception with
Self-Enhancement Maps [78.2581910688094]
This work introduces a novel self-enhancement method to harvest accurate object localization maps and object boundaries with only category labels as supervision.
In particular, the proposed Self-Enhancement Maps achieve the state-of-the-art localization accuracy of 54.88% on ILSVRC.
arXiv Detail & Related papers (2020-06-09T12:35:55Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.