Human Face Recognition from Part of a Facial Image based on Image
Stitching
- URL: http://arxiv.org/abs/2203.05601v1
- Date: Thu, 10 Mar 2022 19:31:57 GMT
- Title: Human Face Recognition from Part of a Facial Image based on Image
Stitching
- Authors: Osama R. Shahin, Rami Ayedi, Alanazi Rayan, Rasha M. Abd El-Aziz,
Ahmed I. Taloba
- Abstract summary: Most of the current techniques for face recognition require the presence of a full face of the person to be recognized.
In this work, we adopted the process of stitching the face by completing the missing part with the flipping of the part shown in the picture.
The selected face recognition algorithms that are applied here are Eigenfaces and geometrical methods.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Most of the current techniques for face recognition require the presence of a
full face of the person to be recognized, and this situation is difficult to
achieve in practice, the required person may appear with a part of his face,
which requires prediction of the part that did not appear. Most of the current
forecasting processes are done by what is known as image interpolation, which
does not give reliable results, especially if the missing part is large. In
this work, we adopted the process of stitching the face by completing the
missing part with the flipping of the part shown in the picture, depending on
the fact that the human face is characterized by symmetry in most cases. To
create a complete model, two facial recognition methods were used to prove the
efficiency of the algorithm. The selected face recognition algorithms that are
applied here are Eigenfaces and geometrical methods. Image stitching is the
process during which distinctive photographic images are combined to make a
complete scene or a high-resolution image. Several images are integrated to
form a wide-angle panoramic image. The quality of the image stitching is
determined by calculating the similarity among the stitched image and original
images and by the presence of the seam lines through the stitched images. The
Eigenfaces approach utilizes PCA calculation to reduce the feature vector
dimensions. It provides an effective approach for discovering the
lower-dimensional space. In addition, to enable the proposed algorithm to
recognize the face, it also ensures a fast and effective way of classifying
faces. The phase of feature extraction is followed by the classifier phase.
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