Bushra Zafar | Govt.College University Faisalabad Pakistan (original) (raw)

Bushra Zafar

Related Authors

Toqeer Mahmood

Toqeer Mahmood

University of Engineering and Technology Taxila, Pakistan

Ameen Banjar

Engr. Sidra Shabbir

IJRASET Publication

humaira afzal

Mudassar Raza

Mudassar Raza

COMSATS Institute of Information Technology Wah Cantt

Maher Alrahhal

Uploads

Papers by Bushra Zafar

Research paper thumbnail of Content-Based Image Retrieval and Feature Extraction: A Comprehensive Review

Mathematical Problems in Engineering

Multimedia content analysis is applied in different real-world computer vision applications, and ... more Multimedia content analysis is applied in different real-world computer vision applications, and digital images constitute a major part of multimedia data. In last few years, the complexity of multimedia contents, especially the images, has grown exponentially, and on daily basis, more than millions of images are uploaded at different archives such as Twitter, Facebook, and Instagram. To search for a relevant image from an archive is a challenging research problem for computer vision research community. Most of the search engines retrieve images on the basis of traditional text-based approaches that rely on captions and metadata. In the last two decades, extensive research is reported for content-based image retrieval (CBIR), image classification, and analysis. In CBIR and image classification-based models, high-level image visuals are represented in the form of feature vectors that consists of numerical values. The research shows that there is a significant gap between image featur...

Research paper thumbnail of Data Augmentation-Assisted Makeup-Invariant Face Recognition

Mathematical Problems in Engineering

Recently, face datasets containing celebrities photos with facial makeup are growing at exponenti... more Recently, face datasets containing celebrities photos with facial makeup are growing at exponential rates, making their recognition very challenging. Existing face recognition methods rely on feature extraction and reference reranking to improve the performance. However face images with facial makeup carry inherent ambiguity due to artificial colors, shading, contouring, and varying skin tones, making recognition task more difficult. The problem becomes more confound as the makeup alters the bilateral size and symmetry of the certain face components such as eyes and lips affecting the distinctiveness of faces. The ambiguity becomes even worse when different days bring different facial makeup for celebrities owing to the context of interpersonal situations and current societal makeup trends. To cope with these artificial effects, we propose to use a deep convolutional neural network (dCNN) using augmented face dataset to extract discriminative features from face images containing syn...

Research paper thumbnail of Content-Based Image Retrieval and Feature Extraction: A Comprehensive Review

Mathematical Problems in Engineering

Multimedia content analysis is applied in different real-world computer vision applications, and ... more Multimedia content analysis is applied in different real-world computer vision applications, and digital images constitute a major part of multimedia data. In last few years, the complexity of multimedia contents, especially the images, has grown exponentially, and on daily basis, more than millions of images are uploaded at different archives such as Twitter, Facebook, and Instagram. To search for a relevant image from an archive is a challenging research problem for computer vision research community. Most of the search engines retrieve images on the basis of traditional text-based approaches that rely on captions and metadata. In the last two decades, extensive research is reported for content-based image retrieval (CBIR), image classification, and analysis. In CBIR and image classification-based models, high-level image visuals are represented in the form of feature vectors that consists of numerical values. The research shows that there is a significant gap between image featur...

Research paper thumbnail of Data Augmentation-Assisted Makeup-Invariant Face Recognition

Mathematical Problems in Engineering

Recently, face datasets containing celebrities photos with facial makeup are growing at exponenti... more Recently, face datasets containing celebrities photos with facial makeup are growing at exponential rates, making their recognition very challenging. Existing face recognition methods rely on feature extraction and reference reranking to improve the performance. However face images with facial makeup carry inherent ambiguity due to artificial colors, shading, contouring, and varying skin tones, making recognition task more difficult. The problem becomes more confound as the makeup alters the bilateral size and symmetry of the certain face components such as eyes and lips affecting the distinctiveness of faces. The ambiguity becomes even worse when different days bring different facial makeup for celebrities owing to the context of interpersonal situations and current societal makeup trends. To cope with these artificial effects, we propose to use a deep convolutional neural network (dCNN) using augmented face dataset to extract discriminative features from face images containing syn...

Log In