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Fingerprint detection classification method based on space transformation convolutional neural network

A technology of convolutional neural network and space transformation, applied in the field of fingerprint detection and classification based on space transformation convolutional neural network, can solve the problems of long training time, large amount of data, high time cost, etc., achieve short time consumption, low cost, The effect of small amount of calculation

Active Publication Date: 2018-09-11
江苏信大数字取证信息安全技术研究院有限公司
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Problems solved by technology

However, the convolutional neural network is very dependent on the provided image data and requires a large amount of data for training. The current training process of the convolutional neural network is complicated and the amount of data is very large, which also results in long training time and high time cost.

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  • Fingerprint detection classification method based on space transformation convolutional neural network
  • Fingerprint detection classification method based on space transformation convolutional neural network
  • Fingerprint detection classification method based on space transformation convolutional neural network

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Embodiment Construction

[0050] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0051] The fingerprint data used in the present invention comes from the image library provided by LivDet2013, an international fingerprint activity detection competition. The fingerprint image database contains four data sets, using Biometric, CrossMatch, Italdata, and Swipe four sensors for fingerprint image collection; the materials for making fake fingerprints include silicone rubber, gelatin, latex, resin, colorful mud, Modasil, and silica gel. Material. In the implementation of the present invention, the distributed TensorFlow architecture is adopted, combined with the python language to carry out programming experiments. The Tensorflow architecture uses graphs to describe the calculation process, and the calculation of data can be realized by building and running the graph. The images in the image library are divided into training libra...

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Abstract

The invention discloses a fingerprint detection classification method based on the space transformation convolutional neural network. The fingerprint detection classification method comprises a fingerprint image extraction region of interest preprocessing, image high-frequency region extraction, image space transformation processing and convolution neural network classification training and testing. The fingerprint image extraction region of interest preprocessing removes a blank region through extracting a fingerprint part in an image; the high-frequency region extraction means the high-frequency characteristic of the image is extracted through a gaussian high-pass filter; as for the image space transformation processing, the space transformation neural network is used for carrying out translation, cutting and rotating operation on the input image, so that expansion of image data is achieved; the convolution neural network adopts multi-layer convolution pooling, convolution kernels with different sizes are used for extracting image features, and a good classification detection effect is obtained on the test set. The invention provides a fingerprint detection method which is low incost, high in detection precision and short in time consumption.

Description

technical field [0001] The invention belongs to the technical field of pattern recognition, and in particular relates to a fingerprint detection and classification method based on a spatial transformation convolutional neural network. Background technique [0002] At present, the fingerprint identification system plays a huge role in many fields such as finance, access control and personnel management. Fingerprint detection technology is widely used in mobile phone unlocking, fingerprint attendance and other fields. However, human fingerprints are very easy to be forged. Only gelatin, paraffin and other materials can be used to produce artificial fingerprints that can deceive fingerprint recognition systems, which brings great potential safety hazards to personal and property safety. [0003] Existing fingerprint detection techniques can be divided into two categories. The first type is a hardware-based solution, which collects information such as finger skin temperature, c...

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Application Information

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IPC IPC(8): G06K9/00G06K9/32G06K9/40G06K9/44G06K9/46G06T3/00G06T5/10G06T5/30G06T7/13
CPCG06T5/10G06T5/30G06T7/13G06T2207/20084G06T2207/20081G06T2207/20024G06T2207/20056G06V40/1347G06V40/1365G06V10/25G06V10/34G06V10/30G06V10/443G06T3/02
Inventor 夏志华余佩鹏沈子璇钱嘉楠
Owner 江苏信大数字取证信息安全技术研究院有限公司
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