Glasses Detection from Human Face Images


Authors : Kajal Lochab; Lakshin Pathak

Volume/Issue : Volume 9 - 2024, Issue 8 - August

Google Scholar : https://tinyurl.com/ybvdnkdp

Scribd : https://tinyurl.com/5b6b2kc9

DOI : https://doi.org/10.38124/ijisrt/IJISRT24AUG707

Abstract : This study uses the MobileNet architecture to provide a novel approach for identifying glasses in photos of people’s faces. The goal of this effort is to correctly identify glasses in face photographs for a variety of uses, including virtual try-on apps, driver monitoring systems, and facial recognition systems. Our study offers a powerful transfer learning-based glasses identification model utilizing the MobileNet architecture. We analyze the issue formulation in detail, taking into account the evaluation metrics, optimization objectives, and mathematical framework. The data, intelligence, and application layers in our suggested architecture are tailored for effective glasses detection. By means of comprehensive testing and analysis, we exhibit the efficacy of our methodology in precisely identifying spectacles in photographs of human faces. The outcomes and conversations demonstrate how well our approach performs in various circumstances and assessment parameters. This study offers insightful information for creating efficient glasses detection algorithms that may be used in a variety of real-world contexts.

Keywords : Glasses Detection, Human Face Images, Image Processing, Transfer Learning, Facial Feature Extraction.

References :

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This study uses the MobileNet architecture to provide a novel approach for identifying glasses in photos of people’s faces. The goal of this effort is to correctly identify glasses in face photographs for a variety of uses, including virtual try-on apps, driver monitoring systems, and facial recognition systems. Our study offers a powerful transfer learning-based glasses identification model utilizing the MobileNet architecture. We analyze the issue formulation in detail, taking into account the evaluation metrics, optimization objectives, and mathematical framework. The data, intelligence, and application layers in our suggested architecture are tailored for effective glasses detection. By means of comprehensive testing and analysis, we exhibit the efficacy of our methodology in precisely identifying spectacles in photographs of human faces. The outcomes and conversations demonstrate how well our approach performs in various circumstances and assessment parameters. This study offers insightful information for creating efficient glasses detection algorithms that may be used in a variety of real-world contexts.

Keywords : Glasses Detection, Human Face Images, Image Processing, Transfer Learning, Facial Feature Extraction.

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