Published February 25, 2022 | Version v1
Dataset Open

Face mask detection and masked facial recognition dataset (MDMFR Dataset)

  • 1. University of Engineering and Technology, Taxila

Description

The unavailability of a unified standard dataset for face mask detection and masked facial recognition motivated us to develop an in-house MDMFR dataset (MDMFR, 2022) to measure the performance of face mask detection and masked facial recognition methods. Both of these tasks have different dataset requirements. Face mask detection requires the images of multiple persons with and without mask. Whereas, masked face recognition requires multiple masked face images of the same person. Our MDMFR dataset consists of two main collections, 1) face mask detection, and 2) masked facial recognition. There are 6006 images in our MDMFR dataset. The face mask detection collection contains two categories of face images i.e., mask and unmask. Our detection database consists of 3174 with mask and 2832 without mask (unmasked) images. To construct the dataset, we captured multiple images of the same person in two configurations (mask and without mask). The masked facial recognition collection contains a total of 2896 masked images of 226 persons. More specifically, our dataset includes the images of both male and female persons of all ages including the children. The images of our dataset are diverse in terms of gender, race, and age of users, types of masks, illumination conditions, face angles, occlusions, environment, format, dimensions, and size, etc. Before being fed to our DeepMaskNet model, all images are scaled to a width and height of 256 pixels. All images have a bit depth of 24. We prepared the images of our dataset for the proposed DeepMaskNet model during preprocessing where images are cropped in Adobe-Photoshop to exclude the extra information like neck and shoulder. As the input size of our Deepmasknet model was 256-by-256, so images were resized to 256-by-256 in publicly available Plastiliq Image Resizer software (Plastiliq, 2022).

Files

final with mask 1.zip

Files (1.9 GB)

Name Size Download all
md5:59fe32aa9fd858188ada479c06d3849b
421.0 MB Preview Download
md5:d1b537be4906124238c86e70088da58a
485.6 MB Preview Download
md5:97b8f37b48d19a262f9a944f236ad6c7
240.5 MB Preview Download
md5:263f5c2a4d11b8ace0de6d6909029e27
439.0 MB Preview Download
md5:87d713a71eca5f44d233a8a06d5e462f
300.0 MB Preview Download