A Neural Network in Convolution with Constant Error Carousel Based Long Short Term Memory for Better Face Recognition

Author:

Ramaraj P.

Abstract

Unconstrained face identification, facial periocular recognition, facial land marking and pose prediction, facial expression recognition, 3D facial model design, and other facial-related problems require robust face detection in the wild. Despite the fact that the face recognition issue has been researched intensively for decades with different commercial implementations, it nevertheless faces problems in certain real-world scenarios due to multiple obstacles, such as severe facial occlusions, incredibly low resolutions, intense lighting, exceptionally pose inconsistencies, picture or video compression artefacts, and so on. To solve the problems described above, a face detection technique called Convolution Neural Network with Constant Error Carousel dependent Long Short Term Memory (CNN-CEC-LSTM) is proposed in this paper. This research implemented a novel network structure and designed a special feature extraction that employs a self-channel attention (SCA) block and a self-spatial attention (SSA) block that adaptively aggregates the feature maps in both channel and spatial domains to learn the inter-channel and inter-spatial connection matrices; additionally, matrix multiplications are conducted for a This approach first smoothed the initial image with a Gaussian filter before measuring the gradient image. The Canny-Kirsch Method edge detection algorithm was then used to identify human face edges. The proposed method is evaluated against two recent difficult face detection databases, including the IIT Kanpur Dataset. The experimental findings indicate that the proposed approach outperforms the most current cutting-edge face recognition approaches.

Publisher

Auricle Technologies, Pvt., Ltd.

Subject

Computational Theory and Mathematics,Computational Mathematics,General Mathematics,Education

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Analysis of an Infectious Disease Vaccination Prediction System Based on the MF-Conv LSTM Model;EAI Endorsed Transactions on Pervasive Health and Technology;2024-09-10

2. A face recognition method based on sparse enhancement and collaborative information fusion for epidemic prevention and control;3rd International Conference on Applied Mathematics, Modelling, and Intelligent Computing (CAMMIC 2023);2023-07-28

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