期刊论文详细信息
Algorithms
PFSegIris: Precise and Fast Segmentation Algorithm for Multi-Source Heterogeneous Iris
Lin Dong1  Yuanning Liu1  Xiaodong Zhu1 
[1] College of Computer Science and Technology, Jilin University, Changchun 130012, China;
关键词: iris segmentation;    heterogeneous iris;    fast segmentation;    iris recognition;   
DOI  :  10.3390/a14090261
来源: DOAJ
【 摘 要 】

Current segmentation methods have limitations for multi-source heterogeneous iris segmentation since differences of acquisition devices and acquisition environment conditions lead to images of greatly varying quality from different iris datasets. Thus, different segmentation algorithms are generally applied to distinct datasets. Meanwhile, deep-learning-based iris segmentation models occupy more space and take a long time. Therefore, a lightweight, precise, and fast segmentation network model, PFSegIris, aimed at the multi-source heterogeneous iris is proposed by us. First, the iris feature extraction modules designed were used to fully extract heterogeneous iris feature information, reducing the number of parameters, computation, and the loss of information. Then, an efficient parallel attention mechanism was introduced only once between the encoder and the decoder to capture semantic information, suppress noise interference, and enhance the discriminability of iris region pixels. Finally, we added a skip connection from low-level features to catch more detailed information. Experiments on four near-infrared datasets and three visible datasets show that the segmentation precision is better than that of existing algorithms, and the number of parameters and storage space are only 1.86 M and 0.007 GB, respectively. The average prediction time is less than 0.10 s. The proposed algorithm can segment multi-source heterogeneous iris images more precisely and quicker than other algorithms.

【 授权许可】

Unknown   

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