PHYSIOLOGICAL SIGNAL RECOGNITION APPARATUS AND PHYSIOLOGICAL SIGNAL RECOGNITION METHOD
20220273244 · 2022-09-01
Assignee
Inventors
- Heng-Yin Chen (Hsinchu County, TW)
- Yun-Yi Huang (Pingtung County, TW)
- Shuen-Yu Yu (New Taipei City, TW)
Cpc classification
G16H20/30
PHYSICS
G16H50/20
PHYSICS
A61B2560/0247
HUMAN NECESSITIES
International classification
A61B5/00
HUMAN NECESSITIES
A61B5/22
HUMAN NECESSITIES
G16H20/30
PHYSICS
Abstract
A physiological signal recognition apparatus and a physiological signal recognition method are provided. A root mean square algorithm is executed on a physiological signal to obtain a noise threshold, and the physiological signal is adjusted based on the noise threshold to obtain an adjusted signal. Then, a muscle strength starting point in the adjusted signal is detected.
Claims
1. A physiological signal recognition apparatus, comprising: a physiological signal sensor, sensing a physiological signal; and a processor, coupled to the physiological signal sensor and configured to: execute a root mean square algorithm on the physiological signal to obtain a noise threshold; adjust the physiological signal based on the noise threshold to obtain an adjusted signal; and detect a muscle strength starting point in the adjusted signal.
2. The physiological signal recognition apparatus according to claim 1, wherein the processor is configured to: multiply an amplitude in the physiological signal that is less than the noise threshold by a first weight value and multiply an amplitude in the physiological signal that is greater than or equal to the noise threshold by a second weight value to obtain the adjusted signal.
3. The physiological signal recognition apparatus according to claim 1, wherein the processor is configured to: set a starting signal threshold, and detect the muscle strength starting point in the adjusted signal based on the starting signal threshold.
4. The physiological signal recognition apparatus according to claim 3, wherein the processor is configured to: set the starting signal threshold according to an action speed.
5. The physiological signal recognition apparatus according to claim 1, wherein the processor is configured to: execute a correction procedure before executing the root mean square algorithm on the physiological signal to execute the root mean square algorithm on a corrected physiological signal after obtaining the corrected physiological signal, wherein the correction procedure comprises: converting the physiological signal into an initial frequency domain signal; searching a database to obtain a noise frequency; removing the noise frequency in the initial frequency domain signal to obtain a corrected frequency domain signal; converting the corrected frequency domain signal into a time domain signal; and recording the time domain signal as the corrected physiological signal.
6. The physiological signal recognition apparatus according to claim 5, further comprising: a compensation element, coupled to the processor and configured to obtain a compensation value, wherein the processor is configured to: calculate a noise variation based on the compensation value, and find the noise frequency corresponding to the noise variation from the database.
7. The physiological signal recognition apparatus according to claim 6, wherein the compensation element is configured to measure a stretching distance between two electrodes of the physiological signal sensor as the compensation value; and the processor is configured to: obtain a resistance value based on the stretching distance, and calculate the noise variation based on the resistance value.
8. The physiological signal recognition apparatus according to claim 6, wherein the compensation element is configured to measure a conductivity as the compensation value; and the processor is configured to: find the noise frequency corresponding to the conductivity from the database.
9. The physiological signal recognition apparatus according to claim 5, wherein the processor is configured to: search the database and compare the initial frequency domain signal with a standard signal to obtain the noise frequency.
10. The physiological signal recognition apparatus according to claim 1, wherein the physiological signal is an electromyography signal.
11. A physiological signal recognition method, comprising: converting a physiological signal into an initial frequency domain signal; calculating a noise variation based on a compensation value obtained by a compensation element; finding a noise frequency corresponding to the noise variation from a database; removing the noise frequency in the initial frequency domain signal to obtain a corrected frequency domain signal; converting the corrected frequency domain signal into a time domain signal; and recording the time domain signal as a corrected physiological signal.
12. The physiological signal recognition method according to claim 11, wherein the step of calculating the noise variation based on the compensation value obtained by the compensation element comprises: measuring a stretching distance between two electrodes of the physiological signal sensor through the compensation element as the compensation value; and obtaining a resistance value based on the stretching distance, and calculating the noise variation based on the resistance value.
13. The physiological signal recognition method according to claim 11, wherein the step of calculating the noise variation based on the compensation value obtained by the compensation element comprises: measuring a conductivity through the compensation element as the compensation value; and finding the noise frequency corresponding to the conductivity from the database.
14. The physiological signal recognition method according to claim 11, further comprising: executing a root mean square algorithm on the corrected physiological signal to obtain a noise threshold; and adjusting the corrected physiological signal based on the noise threshold to obtain an adjusted signal.
15. The physiological signal recognition method according to claim 14, wherein the step of adjusting the corrected physiological signal based on the noise threshold to obtain the adjusted signal comprises: multiplying an amplitude in the corrected physiological signal that is less than the noise threshold by a first weight value and multiplying an amplitude in the corrected physiological signal that is greater than or equal to the noise threshold by a second weight value to obtain the adjusted signal.
16. The physiological signal recognition method according to claim 14, wherein after the step of adjusting the corrected physiological signal based on the noise threshold to obtain the adjusted signal, the physiological signal recognition method further comprises: setting a starting signal threshold according to an action speed, and detecting a muscle strength starting point in the adjusted signal based on the starting signal threshold.
17. A physiological signal recognition method, comprising: converting a physiological signal into an initial frequency domain signal; comparing the initial frequency domain signal with a standard signal to obtain a noise frequency; removing the noise frequency in the initial frequency domain signal to obtain a corrected frequency domain signal; converting the corrected frequency domain signal into a time domain signal; and recording the time domain signal as a corrected physiological signal.
18. The physiological signal recognition method according to claim 17, further comprising: executing a root mean square algorithm on the corrected physiological signal to obtain a noise threshold; and adjusting the corrected physiological signal based on the noise threshold to obtain an adjusted signal.
19. The physiological signal recognition method according to claim 18, wherein the step of adjusting the corrected physiological signal based on the noise threshold to obtain the adjusted signal comprises: multiplying an amplitude in the corrected physiological signal that is less than the noise threshold by a first weight value and multiplying an amplitude in the corrected physiological signal that is greater than or equal to the noise threshold by a second weight value to obtain the adjusted signal.
20. The physiological signal recognition method according to claim 18, wherein after the step of adjusting the corrected physiological signal based on the noise threshold to obtain the adjusted signal, the physiological signal recognition method further comprises: setting a starting signal threshold according to an action speed, and detecting a muscle strength starting point in the adjusted signal based on the starting signal threshold.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0008] The accompanying drawings are included to provide further understanding, and are incorporated in and constitute a part of this specification. The drawings illustrate exemplary embodiments and, together with the description, serve to explain the principles of the disclosure.
[0009]
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DETAILED DESCRIPTION OF DISCLOSED EMBODIMENTS
[0019]
[0020] The physiological signal sensor 110 is configured to detect a physiological signal. The physiological signal is, for example, an electromyography (EMG) signal. The processor 120 is, for example, a central processing unit (CPU), a physics processing unit (PPU), a programmable microprocessor, an embedded control chip, a digital signal processor (DSP), an application specific integrated circuits (ASIC), or other similar apparatuses.
[0021] The storage apparatus 130 is, for example, any type of fixed or removable random-access memory, read-only memory, flash memory, secure digital card, hard disk, other similar apparatuses, or a combination of these apparatuses. Multiple code snippets are stored in the storage apparatus 130. The code snippets are executed by the processor 120 after being installed to execute a physiological signal recognition method. The physiological signal recognition method includes: executing a root mean square (RMS) algorithm on a physiological signal to obtain a noise threshold, adjusting the physiological signal based on the noise threshold to obtain an adjusted signal, and detecting a muscle strength starting point in the adjusted signal.
[0022] The code snippets may be composed into a system module, as shown in
[0023]
[0024] After the adjusted signal 320 is obtained, as shown in
[0025]
[0026]
[0027] Next, in Step S510, the noise variation computing module 421 calculates a noise variation based on a compensation value obtained by the compensation element 410. The compensation element 410 is configured to measure a resistance between two electrodes in the physiological signal sensor 110 as the compensation value. The noise variation computing module 421 calculates the noise variation based on the compensation value.
[0028] Table 1 shows the lookup table of the noise variation. Different compensation values have corresponding noise variations, where xo is the compensation value (resistance value) measured when the two electrodes in the physiological signal sensor 110 are not stretched.
TABLE-US-00001 TABLE 1 Physiological signal S.sub.0 S.sub.1 S.sub.2 S.sub.3 . . . S.sub.n Compensation value (resistance value) x.sub.0 x.sub.1 x.sub.2 x.sub.3 . . . x.sub.n Noise variation D.sub.0 = 0 D.sub.1 D.sub.2 D.sub.3 . . . D.sub.n
[0029] In Table 1, the initial setting of a noise variation Do when the two electrodes are not stretched is 0, and other noise variations D.sub.1 to D.sub.n are calculated based on the following equation (1).
[0031] In addition, a stretching distance between the two electrodes may also be measured by the compensation element 410 as the compensation value.
[0032] For example, when the stretching distance is 1 mm, the noise variation is CV1; when the stretching distance is 2 mm, the noise variation is CV2, and so on. Alternatively, it may also be set such that when the stretching distance falls within a range of 0 to 1 mm, the noise variation is CV1; when the stretching distance falls within a range of 1 to 2 mm, the noise variation is CV2, and so on.
[0033] In addition, the compensation element 410 may also be implemented with multiple capacitors or gyroscopes, which may detect multi-directional stretching action patterns. For example, multiple capacitors are used to sense the stretching of the electrodes in multiple directions or a gyroscope is used to sense twisting and stretching deformation, so as to measure the stretching distance between the two electrodes.
[0034] In addition, the compensation element 410 may also be used to measure conductivity as the compensation value. That is, the compensation element 410 is used to sense skin perspiration to obtain the conductivity. After that, the processor 120 finds a noise frequency corresponding to the conductivity from a database.
[0035] Table 2 shows the correspondence between the conductivity and the frequency.
TABLE-US-00002 TABLE 2 Conductivity Frequency 10% 20% . . . 100% 10 Hz 1 db 0 . . . 2 db 20 Hz 3 db 0 . . . 0 30 Hz 0 4 db . . . 5 db . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
[0036] In terms of conductivity of 10%, if the compensation element 410 detects that the conductivity is 10%, it is found by looking up the table that there are amplitudes at frequencies of 10 Hz and 20 Hz, which are respectively 1 db and 3 db. Therefore, the frequencies of 10 Hz and 20 Hz are used as the noise frequency.
[0037] After obtaining the noise variation, the noise variation computing module 421 finds the noise frequency corresponding to the noise variation from the database in Step S515. That is, one or more noise frequencies corresponding to different noise variations may be established in the storage apparatus 420 in advance. After obtaining the noise variation, the corresponding noise frequency may be obtained by looking up the table.
[0038] After that, in Step S520, the noise reduction module 423 removes the noise frequency in the initial frequency domain signal to obtain a corrected frequency domain signal. Then, in Step S525, the inverse frequency domain conversion module 424 converts the corrected frequency domain signal into a time domain signal. In Step S530, the processor 120 records the time domain signal as a corrected physiological signal.
[0039] In other embodiments, the compensation element may not be used, and the noise frequency may be directly obtained based on a physiological signal and a standard signal.
[0040] In Step S805, the frequency domain conversion module 422 converts a physiological signal into an initial frequency domain signal. Next, in Step S810, the noise variation computing module 421 compares the initial frequency domain signal with a standard signal to obtain a noise frequency. Here, when starting to activate the physiological signal recognition apparatus 700, an initial setting is first performed to obtain an initial physiological signal that has not yet started to perform an action, and the initial physiological signal is converted into a time domain signal as the standard signal for subsequent comparison. For example, the standard signal is subtracted from the initial frequency domain signal to obtain the noise frequency.
[0041] After that, in Step S815, the noise reduction module 423 removes the noise frequency in the initial frequency domain signal to obtain a corrected frequency domain signal. Then, in Step S820, the inverse frequency domain conversion module 424 converts the corrected frequency domain signal into a time domain signal. In Step S825, the processor 120 records the time domain signal as a corrected physiological signal.
[0042] In addition, the physiological signal recognition methods shown in
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[0044]
[0045] The foregoing embodiments may be applied in scientific sports training, and may accurately analyze the starting sequence of each muscle to perform corresponding training adjustments. For example, the foregoing embodiments may be applied in sports training such as baseball, physical fitness, and golf training. The foregoing embodiments may also be applied in health care such as rehabilitation and long-term care, and may confirm whether a rehabilitation action is correct. The timing difference of antagonistic muscles is also an indicator of muscle and joint variation. The foregoing embodiments may also be applied in labor safety monitoring to analyze labor with long-term force exertion. For example, magnitudes of left and right muscle strengths, difference in muscle contraction time, excessive timing difference of antagonistic muscles of hands are detected as warning signals of the body for the reference of the employer.
[0046] Based on the above, the embodiments of the disclosure can detect noise in real time, thereby correcting the signal to improve dynamic accuracy and reduce signal distortion.
[0047] In summary, the disclosure corrects the signal by separating the noise from the main signal through the algorithm to improve dynamic accuracy and reduce signal distortion. Moreover, the use of the weight adjustments may reduce the amplitude of noise and maintain the amplitude of the main frequency. In addition, the starting signal threshold may be adjusted according to the action speed of the user to improve the recognition rate of the muscle strength starting point.
[0048] It will be apparent to those skilled in the art that various modifications and variations can be made to the structure of the disclosed embodiments without departing from the scope or spirit of the disclosure. In view of the foregoing, it is intended that the disclosure cover modifications and variations of this disclosure provided they fall within the scope of the following claims and their equivalents.