Abstract

The performance of iris recognition in non-cooperative environment can be negatively impacted when the resolution of the iris images is low which results in failure to determine the eye center, limbic and pupillary boundary of the iris segmentation. Hence, a combination with periocular features is suggested to increase the authenticity of the recognition system. However, the texture feature of periocular can be easily affected by a background complication while the colour feature of periocular is still limited to spatial information and quantization effects. This happens due to different distances between the sensor and the subject during the iris acquisition stage as well as image size and orientation. The proposed method of periocular feature extraction consists of a combination of rotation invariant uniform local binary pattern to select the texture features and a method of color moment to select the color features. Besides, a hue-saturation-value channel is selected to avoid loss of discriminative information in the eye image. The proposed method which consists of combination between texture and colour features provides the highest accuracy for the periocular recognition with more than 71.5% for the UBIRIS.v2 dataset and 85.7% for the UBIPr dataset. For the fusion recognitions, the proposed method achieved the highest accuracy with more than 85.9% for the UBIRIS.v2 dataset and 89.7% for the UBIPr dataset.

Highlights

  • Increasing applications of security systems such as visual surveillance has motivated the current iris recognition system to identify a person in non-cooperative environment [1, 2]

  • This is because the method has improved the performance of the iris segmentation using the process of frame detection, contrast enhancement and reflection removal in order to reduce the level of noise in the eye images

  • The extraction of texture and colour features in the periocular has improved the performance of the periocular recognition

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Summary

Introduction

Increasing applications of security systems such as visual surveillance has motivated the current iris recognition system to identify a person in non-cooperative environment (at different distances, in motion, under lighting variation and using visible wavelength illumination) [1, 2]. The iris recognition system performance is relying upon between the distance of sensor and the subject This condition has caused difficulty in verifying a person due to low quality of iris data [5] caused by several noise factors such as reflections [6,7,8,9,10], motion-blurred [11], off-angle [12], low lighting [13, 14] and occlusion of eyelid [15,16,17]. The resolution of the sensor and distance of the subject from the sensor are the two Journal homepage: http://section.iaesonline.com/index.php/IJEEI/index

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