Skip to content

Introduction to Data Science group project, 2019. Goal is to successfully implement image area cropping for historical pictures. Team: Alvin Meltsov, Hain Zuppur.

Notifications You must be signed in to change notification settings

Ajapaik/ajapaik-cropper-v2

Repository files navigation

Introduction to Data Science project

Introduction to Data Science project about automaticaly cropping archival images, so there is no photo border in the image. Team: Alvin Meltsov, Hain Zuppur.

Necessary dependencies for running the code:

  • cv2 pip install opencv-python

  • cv2 pip install scikit-image

  • argh pip install argh

... and ofcourse:

  • pip install numpy pandas

## Running the script

To run the algorithm on a single image, run the edge_kernel_single.py and pass the image file name in as a argument.

python edge_kernel_single.py [your file]

There are optional parameters for the kernel passed on with argh:

  • --rotation [even int] an even number specifing the rotational range trialed with this algorithm. When using large pictures and you know the angle, set it to smaller number. Default 20 degrees (-10 .. 10).

  • --minlen [float] float between 1 .. 0 which marks how long lines in relation to the length of the axis of the picture should be detected from the picture. Default 0.59.

  • --thresh [float] float value which specifies the thresholding z-score where image is cropped. The higher the score the less the chance of cropping. Default 1.98.

  • --sizediff [int] integer above 1. How much of size of the image must be preserved to crop. If the frame is on average 1/4 of the image, you don't want to set it to 8, which means that only 1/8 of the picture can remain.

To run the algorithm on a directory of images, run the run_batch.sh and pass the directory in as a argument.

./run_batch.sh [directory of your pictures]

About

Introduction to Data Science group project, 2019. Goal is to successfully implement image area cropping for historical pictures. Team: Alvin Meltsov, Hain Zuppur.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages