House price estimation from visual and textual features using both machine learning and deep learning models
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Updated
Oct 27, 2024 - Jupyter Notebook
House price estimation from visual and textual features using both machine learning and deep learning models
Worked on AFLW2000-3D dataset which is a dataset of 2000 images. The regression model of predicting the 3 angles (pitch - yaw - roll) of head pose estimation was XGboost Regressor.
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