Line-of-sight estimation method based on depth appearance gaze network

A line-of-sight estimation and appearance technology, applied in the field of line-of-sight estimation, can solve problems such as complex backgrounds and prone to errors

Inactive Publication Date: 2018-06-15
SHENZHEN WEITESHI TECH
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Problems solved by technology

Due to the complex background of face images collected in daily life, it is affected by conditions such as illumination, posture, gaze direction, and personal appearance, and most of the existing methods are only applicable to data sets with specific backgrounds. Once estimated across data sets, the results are easy. There are errors, so it is still a challenge to accurately estimate the line of sight

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  • Line-of-sight estimation method based on depth appearance gaze network
  • Line-of-sight estimation method based on depth appearance gaze network
  • Line-of-sight estimation method based on depth appearance gaze network

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[0031] It should be noted that, in the case of no conflict, the embodiments in the present application and the features in the embodiments can be combined with each other. The present invention will be further described in detail below in conjunction with the drawings and specific embodiments.

[0032] figure 1 It is a frame diagram of a line-of-sight estimation method based on the deep appearance gaze network of the present invention. It mainly includes gaze dataset, gaze network, and cross-dataset evaluation.

[0033] Among them, the gaze data set, in order to evaluate the unconstrained line of sight estimation method, the data set needs head poses, gaze directions and personal appearances with different lighting conditions, and a large number of images from different participants are collected as the gaze data set. The images include Gaze estimation performance is evaluated on 3D annotations of gaze targets, and of detected eye or head positions, followed by manual annotat...

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Abstract

The invention provides a line-of-sight estimation method based on a depth appearance gaze network. Main content of the method includes a gaze data set, a gaze network, and cross-data set evaluation. The method comprise the following steps: a large number of images from different participants are collected as a gaze data set, face marks are manually annotated on subsets of the data set, face calibration is performed on input images obtained via a monocular RGB camera, a face detection method and a face mark detection method are adopted to position the marks, a general three-dimensional face shape model is fitted to estimate a detected three-dimensional face posture, a spatial normalization technique is applied, the head posture and eye images are distorted to a normalized training space, and a convolutional neural network is used to learn mapping of the head posture and the eye images to three-dimensional gaze in a camera coordinate system. According to the method, a continuous conditional neural network model is employed to detect the face marks and average face shapes for performing three-dimensional posture estimation, the method is suitable for line-of-sight estimation in different environments, and accuracy of estimation results is improved.

Description

technical field [0001] The invention relates to the field of gaze estimation, in particular to a gaze estimation method based on a deep appearance gaze network. Background technique [0002] Line of sight estimation is to estimate the line of sight direction of the human eye in the picture, calculate and return the coordinates of the center position of the eyeballs of both eyes, and the line of sight direction vector of both eyes. Real-time tracking of human eye sight can be realized in the video, which is often used in public security, transportation, medicine, military investigation and other fields. Specifically, in the field of public security, by estimating the direction of the human eye's gaze, it is possible to infer the area or object that the person is concerned about, and further study the person's psychological activities, etc., which can be used for lie detection during the interrogation of prisoners. In the field of traffic, sight estimation automatically monit...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62
CPCG06V40/19G06V40/193G06V40/197G06F18/2413
Inventor 夏春秋
Owner SHENZHEN WEITESHI TECH
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