Downloading and loading the MIT-CBCL dataset into the memory
In this recipe, we will understand how to download the MIT-CBCL dataset and load it into the memory.
With a predicted worth of $15 billion by 2025, the biometrics industry is poised to grow like never before. Some of the examples of physiological characteristics used for biometric authentication include fingerprints, DNA, face, retina or ear features, and voice. While technologies such as DNA authentication and fingerprints are quite advanced, face recognition brings its own advantages to the table.
Ease of use and robustness due to recent developments in deep learning models are some of the driving factors behind face recognition algorithms gaining so much popularity.
Getting ready
The following key points need to be considered for this recipe:
- The
MIT-CBCL
dataset is composed of 3,240 images (324 images per subject). In our model, we will make arrangements to augment the data in order to increase model robustness. We will employ techniques...