...
首页> 外文期刊>International Journal of Computer Vision >Multiscale fusion of visible and thermal IR images for illumination-invariant face recognition
【24h】

Multiscale fusion of visible and thermal IR images for illumination-invariant face recognition

机译:可见光图像和热红外图像的多尺度融合,可实现照明不变的人脸识别

获取原文
获取原文并翻译 | 示例
           

摘要

This paper describes a new software-based registration and fusion of visible and thermal infrared (IR) image data for face recognition in challenging operating environments that involve illumination variations. The combined use of visible and thermal IR imaging sensors offers a viable means for improving the performance of face recognition techniques based on a single imaging modality. Despite successes in indoor access control applications, imaging in the visible spectrum demonstrates difficulties in recognizing the faces in varying illumination conditions. Thermal IR sensors measure energy radiations from the object, which is less sensitive to illumination changes, and are even operable in darkness. However, thermal images do not provide high-resolution data. Data fusion of visible and thermal images can produce face images robust to illumination variations. However, thermal face images with eyeglasses may fail to provide useful information around the eyes since glass blocks a large portion of thermal energy. In this paper, eyeglass regions are detected using an ellipse fitting method, and replaced with eye template patterns to preserve the details useful for face recognition in the fused image. Software registration of images replaces a special-purpose imaging sensor assembly and produces co-registered image pairs at a reasonable cost for large-scale deployment. Face recognition techniques using visible, thermal IR, and data-fused visible-thermal images are compared using a commercial face recognition software (FaceIt (R)) and two visible-thermal face image databases (the NIST/Equinox and the UTK-IRIS databases). The proposed multiscale data-fusion technique improved the recognition accuracy under a wide range of illumination changes. Experimental results showed that the eyeglass replacement increased the number of correct first match subjects by 85% (NIST/Equinox) and 67%, (UTK-IRIS).
机译:本文介绍了一种新的基于软件的可见光和热红外(IR)图像数据配准和融合,以在涉及光照变化的具有挑战性的操作环境中进行面部识别。可见光和热红外成像传感器的组合使用提供了一种可行的手段,可以改善基于单个成像方式的面部识别技术的性能。尽管在室内门禁应用中取得了成功,但可见光谱成像仍显示出在变化的照明条件下识别人脸的困难。热红外传感器可测量来自物体的能量辐射,该能量辐射对照明变化不太敏感,甚至可以在黑暗中使用。但是,热图像不能提供高分辨率数据。可见光图像和热图像的数据融合可以产生对照明变化具有鲁棒性的人脸图像。但是,带眼镜的热脸图像可能无法在眼睛周围提供有用的信息,因为玻璃会阻挡大部分热能。在本文中,使用椭圆拟合方法检测眼镜区域,并替换为眼睛模板图案,以保留对融合图像中的面部识别有用的细节。图像的软件配准取代了专用的成像传感器组件,并以合理的成本生成了共同配准的图像对,以进行大规模部署。使用商业面部识别软件(FaceIt(R))和两个可见热面部图像数据库(NIST / Equinox和UTK-IRIS数据库),对使用可见光,热红外和数据融合的可见热图像的面部识别技术进行了比较。 )。所提出的多尺度数据融合技术在宽范围的照明变化下提高了识别精度。实验结果表明,更换眼镜使正确的首次比赛对象的数量增加了85%(NIST / Equinox)和67%(UTK-IRIS)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号