{"title":"利用多光谱手掌纹理选择最佳光谱","authors":"M. Maheswari, S. Ancy, G. Suresh","doi":"10.1109/ICRTIT.2013.6844204","DOIUrl":null,"url":null,"abstract":"Multispectral palm print is one of the most reliable and unique Biometric. MSI have faster acquisition time and better quality images than normal images. The advantages of the proposed method include better hygiene and higher verification performance. In this we proposed Local binary Pattern (LBP) based histogram for multispectral palm print representation and to choose the best spectrum for authentication. Here the central part of the palm print image is resized to the size of 180 × 180 and divided into non overlapping sub-images. The size of the sub-image various from 2×2 pixels to 90×90 pixels. The histogram is obtained for each block and the values are used for comparison. Totally 36 images per person are taken from standard database available. Training set is prepared with the help of 2 images from each spectrum. Results are checked against remaining images in authentication mode. Results are represented in terms of Genuine acceptance rate(%). Most of the palm print recognition systems use white light to acquire Images. This study analyzes the palm print recognition performance under six different illuminations, including the white light. The experimental results with a large database show that white light is not the optimal illumination, while 700nm light could achieve higher palm print recognition accuracy than the white light. In authentication mode 98% recognition rate is obtained for the spectrum 700nm. The experiment was conducted for six spectrums like 460,630,700,850,940nm, White Light. We use the CASIA-MS-Palmprint V1 database of size 7200 images collected by the Chinese Academy of Sciences' Institute of Automation (CASIA).","PeriodicalId":113531,"journal":{"name":"2013 International Conference on Recent Trends in Information Technology (ICRTIT)","volume":"29 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2013-07-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Selecting best spectrum using multispectral palm texture\",\"authors\":\"M. Maheswari, S. Ancy, G. Suresh\",\"doi\":\"10.1109/ICRTIT.2013.6844204\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Multispectral palm print is one of the most reliable and unique Biometric. MSI have faster acquisition time and better quality images than normal images. The advantages of the proposed method include better hygiene and higher verification performance. In this we proposed Local binary Pattern (LBP) based histogram for multispectral palm print representation and to choose the best spectrum for authentication. Here the central part of the palm print image is resized to the size of 180 × 180 and divided into non overlapping sub-images. The size of the sub-image various from 2×2 pixels to 90×90 pixels. The histogram is obtained for each block and the values are used for comparison. Totally 36 images per person are taken from standard database available. Training set is prepared with the help of 2 images from each spectrum. Results are checked against remaining images in authentication mode. Results are represented in terms of Genuine acceptance rate(%). Most of the palm print recognition systems use white light to acquire Images. This study analyzes the palm print recognition performance under six different illuminations, including the white light. The experimental results with a large database show that white light is not the optimal illumination, while 700nm light could achieve higher palm print recognition accuracy than the white light. In authentication mode 98% recognition rate is obtained for the spectrum 700nm. The experiment was conducted for six spectrums like 460,630,700,850,940nm, White Light. 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引用次数: 1
摘要
多光谱掌纹是最可靠、最独特的生物识别技术之一。MSI具有比普通图像更快的采集时间和更好的图像质量。该方法具有较好的卫生性和较高的验证性能。本文提出了基于局部二值模式(LBP)的掌纹直方图多光谱表示方法,并选择最佳的掌纹光谱进行认证。在这里,掌纹图像的中心部分被调整为180 × 180的大小,并划分为不重叠的子图像。子图像的大小从2×2像素到90×90像素不等。获得每个块的直方图,并将其值用于比较。每人总共36张图片取自标准数据库。训练集是利用来自每个光谱的2张图像来准备的。在身份验证模式下对剩余映像检查结果。结果以真实接受率(%)表示。大多数掌纹识别系统使用白光来获取图像。本研究分析了包括白光在内的六种不同光照下的掌纹识别性能。大型数据库的实验结果表明,白光不是最优照明,700nm光比白光能达到更高的掌纹识别精度。在认证模式下,对700nm光谱的识别率达到98%。实验在460、630,700、850,940nm、白光等6个光谱下进行。我们使用CASIA- ms - palm - print V1数据库,由中国科学院自动化研究所(CASIA)收集的7200幅图像。
Selecting best spectrum using multispectral palm texture
Multispectral palm print is one of the most reliable and unique Biometric. MSI have faster acquisition time and better quality images than normal images. The advantages of the proposed method include better hygiene and higher verification performance. In this we proposed Local binary Pattern (LBP) based histogram for multispectral palm print representation and to choose the best spectrum for authentication. Here the central part of the palm print image is resized to the size of 180 × 180 and divided into non overlapping sub-images. The size of the sub-image various from 2×2 pixels to 90×90 pixels. The histogram is obtained for each block and the values are used for comparison. Totally 36 images per person are taken from standard database available. Training set is prepared with the help of 2 images from each spectrum. Results are checked against remaining images in authentication mode. Results are represented in terms of Genuine acceptance rate(%). Most of the palm print recognition systems use white light to acquire Images. This study analyzes the palm print recognition performance under six different illuminations, including the white light. The experimental results with a large database show that white light is not the optimal illumination, while 700nm light could achieve higher palm print recognition accuracy than the white light. In authentication mode 98% recognition rate is obtained for the spectrum 700nm. The experiment was conducted for six spectrums like 460,630,700,850,940nm, White Light. We use the CASIA-MS-Palmprint V1 database of size 7200 images collected by the Chinese Academy of Sciences' Institute of Automation (CASIA).