Non-contact heart rate variability feature extraction method based on real application scene

A technology of heart rate variability and application scenarios, applied in the fields of signal processing and computer vision, can solve the problems affecting the accuracy of heart rate variability features and slow extraction speed, and achieve the effect of strengthening practical application significance and improving extraction accuracy.

Pending Publication Date: 2021-11-16
TIANJIN UNIVERSITY OF TECHNOLOGY
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Benefits of technology

This patented technology allows for faster and more accurate analysis of cardiovascular health by adding an algorithm called Non Contact HeartRate Variation (NFC) Analysis with Realism Applications scenarios. By combining this technique with various factors like shake or brightness during testing, it becomes possible to improve the quality of NFC data collected from these environments without affecting their effectiveness over time.

Problems solved by technology

This patented technical solution described in the text describes how cardiovascular function can vary over time depending upon external stimuli like exercise stressors. It suggests detecting these variations with cameras attached to people's bodies during physical activities. These techniques involve analyzing images captured while they actively participate in their own movements without being affected by other things around them.

Method used

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  • Non-contact heart rate variability feature extraction method based on real application scene
  • Non-contact heart rate variability feature extraction method based on real application scene
  • Non-contact heart rate variability feature extraction method based on real application scene

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Embodiment Construction

[0043] The present invention will be further described below in conjunction with the accompanying drawings.

[0044]The present invention provides a non-contact heart rate variability feature extraction method based on realistic application scenarios, which can quickly and accurately extract heart rate variability features in real application scenarios, and can be used for emotional recognition to reflect the measured person The level of psychological stress can be applied to assist customs staff in screening suspicious customs clearance personnel and other real-world scenarios.

[0045] Refer to attached figure 2 , the present invention proposes a strategy for improving the feature extraction speed by combining face detection and face tracking to obtain face regions. Obtain the face position through face detection and then track the face position. At the same time, during the tracking process, reposition the face position through face detection at fixed time intervals to pr...

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Abstract

The invention discloses a non-contact heart rate variability feature extraction method based on a real application scene. The method comprises the following steps: 1) collecting an image containing a human face; 2) acquiring an image face area by using a face detection and tracking combined strategy; 3) enhancing skin color change through Euler amplification; 4) color space conversion and channel separation; 5) self-adaptive threshold skin detection; 6) extracting a source signal; (7) EEMD denoising; 8) carrying out five-point sliding smoothing filtering; 9) peak point detection and abnormal peak point correction; and 10) RR interval calculation and time domain, frequency domain and nonlinear HRV feature extraction. According to the method, the strategy for improving the feature extraction speed and the strategy for overcoming the influence of shaking and illumination and improving the feature extraction accuracy are integrated in the feature extraction method, the HRV features can be rapidly extracted in a non-contact mode in a real application environment, and it is guaranteed that the HRV features are consistent with contact type extraction results.

Description

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Claims

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Application Information

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Owner TIANJIN UNIVERSITY OF TECHNOLOGY
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