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Multimodal human eye blink recognition method using feature level fusion for exigency detection

机译:使用特征级融合来识别识别方法的多模式人眼闪烁识别方法

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摘要

In this paper, a precise multimodal eye blink recognition method using feature level fusion (MmERMFLF) is proposed. A new feature: eye-eyebrow facet ratio (EEBFR) (formed by fusing eye facet ratio (EFR: ratio of diagonal length and width of eye) and eyebrow to nose facet ratio (EBNFR: distance between eyebrow landmarks and nose landmark)) for approximating the eye state is computed. Initially, an improved intellectual framework (Sagacious Information Recuperation Technique) that senses the emergency state using information retrieved from eye blinks, pulse rate as well as behavioral patterns(emotions) exhibited by an individual is presented. Further a novel multimodal method (MmERMFLF) for detection and counting of eye blinks is implemented. For training, one state-of-the-art database-ZJU is used. To additionally improve the performance, feature-level fusion schemes [simple concatenate and fusion codes (gaborization)] are enforced and equated. Receiver operating characteristics, error rate, sensitivity, specificity, and precision are used to demonstrate the performance of the proposed method qualitatively and quantitatively. Accuracy with proposed MmERMFLF is increased to 99.02% (using EEBGFR method with bagged ensemble classifier) in comparison to unimodal eye blink recognition system (97.60%). 99.80% genuine blinks are classified by MmERMFLF (when gaborization fusion is used) using simple tree classifier.
机译:本文提出了一种使用特征级融合(MMERMFLF)的精确多模态眨眼识别方法。一种新功能:ey-eyebrocrow面部比(EEBFR)(通过熔断眼面比(EFR:对角线长度和眼睛宽度的比率)和眉毛朝向鼻部的比例(EBNFR:眉地之间的距离,眉毛和鼻子地标之间))逼近眼睛状态是计算的。最初,提出了一种改进的智力框架(SAGICAL信息回收技术),其使用从眼睛闪烁的信息,脉冲率以及由个人呈现的行为模式(情绪)所检测的信息感测紧急状态。此外,实现了用于检测和计数眼睛闪烁的新型多模型方法(MMERMFLF)。对于培训,使用一个最先进的数据库-ZJU。为了另外提高性能,强制和等同于特征级融合方案[简单的连接和融合码(致融合)]。接收器操作特性,错误率,灵敏度,特异性和精度用于定性和定量地展示所提出的方法的性能。与单峰眨眼识别系统(97.60%)相比,具有提出的MMERMFLF的准确性增加到99.02%(使用带袋合奏分类器的EEBGFR方法)(97.60%)。 MMERMFLF(当使用咯态融合时)使用简单的树分类器进行99.80%闪烁。

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