Enhanced Face Identification Performance Using Online Mining Strategy in Multi-Task Cascaded Mask Convolutional Networks

被引:0
|
作者
Mony, Krishnaraj [1 ]
Raj, Jeberson Retna [1 ]
机构
[1] Department of Computer Science and Engineering, School of Computing, Sathyabama Institute of Science and Technology, Tamil Nadu, Chennai,600 119, India
关键词
Benchmarking - Convolutional neural networks - Deep learning - Graphics processing unit - Image acquisition - Multi-task learning - Photomasks;
D O I
10.18280/ts.420113
中图分类号
学科分类号
摘要
Due to the variety of lighting, postures, and occlusions, symmetry of faces and identification in an unrestricted area are difficult. The latest study demonstrates that deep learning techniques can do remarkably well on these two challenges. The complex transmitted multitask structure the developers provide in this research takes advantage of the natural relationship between them to improve efficiency. The suggested Multi-task Cascaded Mask Convolutional Network (MTCMCN) has three layers of carefully planned deep convolution networks that work together to figure out where faces and landmarks are from a wide range of angles. Additionally, they provide a novel, continuous, difficult sample mining approach for learning procedures, which may automatically boost efficiency without the manual choice of samples. The use of a sizable cross-age image collection containing gender and age descriptors advances the creation of Age-Invariant Face Recognition (AIFR) and FAS. MTCMCN outperforms existing methods by achieving state-of-the-art accuracy on benchmarks like FDDB and WIDER FACE, exceeding 95% accuracy in some cases. It has a Central Processing Unit (CPU) speed of 16 frames per second and a GPU speed of 99 frames per second, ensuring real-time performance. The proposed system achieves this by using a special identification conditional block and live hard sample mining, thereby improving face recognition regardless of age. ©2025 The authors.
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页码:143 / 152
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