Design of computer image automatic processing system based on artificial intelligence algorithm

被引:0
作者
You G. [1 ]
机构
[1] College of Engineering and Technology, Xi’an FanYi University, Shaanxi, Xi’an
关键词
AIPM; artificial intelligence; automatic image processing method; automatic processing; face recognition; feature extraction;
D O I
10.1504/IJMTM.2024.139501
中图分类号
学科分类号
摘要
Automatic image processing systems are applied for recognising human faces in crowds, person identification, and face matching applications. The varying textures, input representation, and position impact detection accuracy and recognition. Therefore, this article introduces an automatic image processing method (AIPM) for face recognition (FR) using deep learning (DL) paradigm. This method extracts the textural features based on the image position and classifies them based on pixel mapping. Semantic (even) and uneven pixel variations are observed in the classification process. The semantic classified pixels are used for correlating different image segments that are further used for training the learning network. The uneven pixels classified using DL is discarded to prevent recognition errors. The DL paradigm verifies the pixel position and coordinate mapping between different inputs. The detection is improved based on the classified output for semantic and uneven pixels. The training is based on semantic and mapping pixels, for which the training is improvised using erroneous pixels. Therefore, precision is improved with controlled analysis complexity. © 2024 Inderscience Enterprises Ltd.
引用
收藏
页码:321 / 341
页数:20
相关论文
共 29 条
[1]  
Bi Y., Xue B., Zhang M., Multi-objective genetic programming for feature learning in face recognition, Applied Soft Computing, 103, (2021)
[2]  
Cerkezi L., Topal C., Towards more discriminative features for texture recognition, Pattern Recognition, 107, (2020)
[3]  
Chong L.Y., Ong T.S., Teoh A.B.J., Feature fusions for 2.5 D face recognition in random maxout extreme learning machine, Applied Soft Computing, 75, pp. 358-372, (2019)
[4]  
Dhamija A., Dubey R.B., A novel active shape model-based DeepNeural network for age invariance face recognition, Journal of Visual Communication and Image Representation, 82, (2022)
[5]  
Ekpenyong M.E., Wilson P.M., Brown A.S., Feature redundancy approach to efficient face recognition in still images, SN Applied Sciences, 1, 6, pp. 1-29, (2019)
[6]  
Ge S., Zhao S., Li C., Li J., Low-resolution face recognition in the wild via selective knowledge distillation, IEEE Transactions on Image Processing, 28, 4, pp. 2051-2062, (2018)
[7]  
Guo G., Zhang N., A survey on deep learning based face recognition, Computer Vision and, Image Understanding, 189, (2019)
[8]  
Heinsohn D., Villalobos E., Prieto L., Mery D., Face recognition in low-quality images using adaptive sparse representations, Image and Vision Computing, 85, pp. 46-58, (2019)
[9]  
Juneja K., Rana C., An extensive study on traditional-to-recent transformation on face recognition system, Wireless Personal Communications, 118, 4, pp. 3075-3128, (2021)
[10]  
Khan M.J., Khan M.J., Siddiqui A.M., Khurshid K., An automated and efficient convolutional architecture for disguise-invariant face recognition using noise-based data augmentation and deep transfer learning, The Visual Computer, 38, 2, pp. 509-523, (2022)