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You are here: Home / Archives for Python / NumPy / NumPy linalg.svd

NumPy linalg.svd

Image Reconstruction using Singular Value Decomposition (SVD) in Python

January 20, 2020 by cmdlinetips

Scree Plot: Proportion of variance Explained

In this post, we will explore the use of SVD on Image analysis. We will mainly use SVD on images to get main components/singular vectors capturing the image and use part of them to reconstruct the image. Singular Value Decomposition (SVD) is one of the commonly used dimensionality reduction techniques. SVD/PCA is the mainstay of […]

Filed Under: NumPy linalg.svd, Python, SVD in Python Tagged With: Python SVD, Python Tips

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