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Image stitching using Feature Matching and Deep Learning methods.

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AutoPano

The aim of this project is to stitch two or more images (with 30-50% overlap) together to create one seamless panorama image. In the first phase, we use the traditional feature descriptors method, and in the second phase, we take a deep learning approach for homography estimation.

Setting up the package

This package was built using Python 3.7, Pytorch and OpenCV on Ubuntu 20.04. Follow the instructions on this page to setup Pytorch and this page to setup OpenCV for Ubuntu. Other packages include matplotlib, scipy and scikitlearn. These are relatively easy to install using pip install *package_name*.

Download the package:

git clone [email protected]:latent-pixel/AutoPano.git

Phase I: Stitching Images via Feature Descriptor Method

The correspondences between two images are computed using feature descriptors, which are in turn computed by using Adaptive Non-Maximal Suppression (ANMS) on corners detected using traditional corner detection methods such as Harris Corners.

Running the package

From the package's root directory, use the following command to run it:

python3 phase1/code/Wrapper.py

The results can then be found in a separate results folder in the package.

Results

After Non-Maximal Suppression,

Harris Corners Shi-Tomasi Corners

Finally, the panoramas created:

Set 1 Set 2