Abstract:
With the improving efficacy of generative algorithms, the performance of face super-resolution algorithms is also increasing towards generating high-quality facial data. ...Show MoreMetadata
Abstract:
With the improving efficacy of generative algorithms, the performance of face super-resolution algorithms is also increasing towards generating high-quality facial data. However, are these images useful for face recognition? This paper investigates whether these enhanced super-resolved facial images only improve the visual quality or they also aid in improving the recognizability of these images, thus contributing towards addressing the challenge of low-resolution face recognition. We conduct a comprehensive empirical and statistical analysis of human perception and face recognition tasks. Extensive experiments are performed using multiple state-of-the-art generative and face recognition models across six publicly available face datasets to assess whether face super-resolution algorithms are effective in recognizing individuals in low-resolution conditions. The results and supporting analysis indicate that the ability of super-resolution images to improve recognizability is limited, and further research is required to design generative AI algorithms that improve both visual appearance and recognizability of low-resolution images.
Date of Conference: 15-18 September 2024
Date Added to IEEE Xplore: 11 November 2024
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- Face Recognition ,
- Empirical Analysis ,
- Face Images ,
- Visual Quality ,
- Low-resolution Images ,
- Face Recognition Task ,
- Face Data ,
- Face Recognition Model ,
- High-resolution Images ,
- Generation Process ,
- Generative Adversarial Networks ,
- Diffusion Model ,
- Recognition Accuracy ,
- Image Generation ,
- High-quality Images ,
- Proper Technique ,
- Recognition Performance ,
- Imaging Probes ,
- Peak Signal-to-noise Ratio ,
- Low-quality Images ,
- Generative Adversarial Networks Model ,
- Super-resolution Techniques ,
- Low-resolution Data ,
- Face Recognition Performance ,
- Super-resolution Model ,
- Fréchet Inception Distance ,
- Structural Similarity Index Measure ,
- Improve Recognition Performance ,
- Gallery Images ,
- Biometric Characteristics
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Face Recognition ,
- Empirical Analysis ,
- Face Images ,
- Visual Quality ,
- Low-resolution Images ,
- Face Recognition Task ,
- Face Data ,
- Face Recognition Model ,
- High-resolution Images ,
- Generation Process ,
- Generative Adversarial Networks ,
- Diffusion Model ,
- Recognition Accuracy ,
- Image Generation ,
- High-quality Images ,
- Proper Technique ,
- Recognition Performance ,
- Imaging Probes ,
- Peak Signal-to-noise Ratio ,
- Low-quality Images ,
- Generative Adversarial Networks Model ,
- Super-resolution Techniques ,
- Low-resolution Data ,
- Face Recognition Performance ,
- Super-resolution Model ,
- Fréchet Inception Distance ,
- Structural Similarity Index Measure ,
- Improve Recognition Performance ,
- Gallery Images ,
- Biometric Characteristics