Correlation Study of 3D Surface Roughness of Milled Surfaces with Laser Speckle Pattern
Abstract
:1. Introduction
- Use of inexpensive laser pointers for producing the laser speckle pattern.
- A correlation study of the characteristic features extracted from the image of the laser speckle pattern of the milled surface and 3D surface roughness parameters, measured with commercial 3D metrology system.
- A study about the influence of the angle of illumination of a laser beam, f-number and the shutter speed of a camera setting on the correlation of 3D surface roughness parameters with the characteristic features extracted from the laser pattern image of the milled surface.
2. Materials and Methods
2.1. Sample Preparation
- Arithmetic Mean Height (Sa)
- Root-Mean-Square Height (Sq)
- Maximum Peak Height (Sp)
- Maximum Valley Depth (Sv)
- Maximum Height (Sz)
- Ten Point Height (S10z)
- Skewness (Ssk)
- Kurtosis (Sku)
- Root Mean Square Gradient (Sdq)
- Developed Interfacial area ratio (Sdr)
2.2. Experimental Setup
2.3. Characteristic Features Extraction
- Histogram-based (statistical) features
- ∘
- MeanMean of gray value of the image m obtained from the original image f(x,y) of size M × N given by Equation (1).
- ∘
- Standard deviationStandard deviation σ of an image is given by Equation (2).rj is the jth gray level.L is the total possible gray level value.p(rj) is the probability of occurrences of rj.m is the mean of gray values of the image.
- ∘
- EnergyThe energy descriptor, which is also known as uniformity, measures how pixel values are distributed along the gray level range and can be calculated for grayscale images using Equation (3).rj is the jth gray level.L is total possible gray level value.p(rj) is the probability of occurrences of rj.
- ∘
- EntropyThe entropy descriptor provides information about the complexity of the image, as given by Equation (4).rj is the jth gray level.L is total possible gray level value.p(rj) is the probability of occurrences of rj.
- Texture features
- ∘
- Normalised descriptor of roughness RNormalised descriptor of roughness R is as given in Equation (5).σ2 is variance.L is total possible gray level value
- Gray level co-occurrence matrix (GLCM)The histogram-based texture descriptors do not provide any information about the spatial relationship among pixels. This information can be obtained using the gray level co-occurrence matrix (GLCM). The matrix holds the information about the number of times pixels with intensities ri and rj occur in the image f(x,y) in the position specified by the displacement vector d = (dx,dy) and orientation θ. In this work, the default values of the displacement vector and orientation, as in the MATLAB software, that is d = (0,1) and orientation of 0°, were used. The matrix is normalized as given in Equation (6).Ng(i,j) is the normalized gray level co-occurrence matrix.g(i,j) is the element of the gray level co-occurrence matrix.The following texture-based features are computed using a normalized GLCM, Ng(i,j).
- ∘
- Maximum Probability as given by Equation (7).
- ∘
- Correlation as given by Equation (8).µi is the mean of the row sums of Ng(i,j).µj is the mean of column sums of Ng(i,j).σi is the standard deviation of row sums of Ng(i,j).σj is the standard deviation of column sums of Ng(i,j).
- ∘
- Contrast as given by Equation (9).
- ∘
- Energy as given by Equation (10).
- ∘
- Homogeneity as given by Equation (11).
- ∘
- Entropy as given by Equation (12).
- From the binary image, the following characteristic features were extracted:
- ∘
- Total white pixels to total black pixels ratio (W/B)
3. Results and Discussion
4. Conclusions
- An inexpensive laser pointer can be used for producing a laser speckle pattern.
- Good correlations between the characteristic features and 3D surface roughness were obtained.
- It was found that the angle of illumination, f-number and shutter speed combination affect the coefficient of determinations.
5. Recommendation for Future Work
- In this work, the authors limited their study using GLCM to displacement d = 1 and orientation . Future correlation studies should be carried out using GLCM for different combinations of displacement and orientation.
- A study should also be conducted on how the wavelength of a laser and the distance of the camera from the sample affect the correlation.
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Surface No. | Spindle Speed (rpm) | Feed Rate (mm/min) | Depth of Cut (mm) | Sa (µm) | Sq (µm) | Sp (µm) | Sv (µm) | Sz (µm) | S10z (µm) | Ssk | Sku | Sdq | Sdr (%) |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 1000 | 120 | 1 | 0.931 | 1.117 | 4.070 | 3.889 | 7.959 | 6.187 | −0.044 | 2.415 | 0.161 | 1.305 |
2 | 1000 | 280 | 1 | 1.046 | 1.322 | 8.081 | 7.774 | 15.855 | 9.217 | 0.281 | 3.398 | 0.177 | 1.553 |
3 | 1000 | 440 | 1 | 1.325 | 1.675 | 9.809 | 6.795 | 16.605 | 10.826 | 0.146 | 3.442 | 0.191 | 1.790 |
4 | 1000 | 600 | 1 | 1.162 | 1.567 | 11.639 | 13.136 | 24.775 | 14.423 | 0.275 | 6.054 | 0.242 | 2.636 |
5 | 1000 | 760 | 1 | 1.254 | 1.816 | 10.948 | 8.678 | 19.626 | 16.608 | 0.360 | 6.142 | 0.318 | 4.565 |
6 | 2500 | 120 | 1 | 0.748 | 0.902 | 5.681 | 6.960 | 12.641 | 5.122 | 0.335 | 2.473 | 0.185 | 1.722 |
7 | 2500 | 280 | 1 | 0.968 | 1.156 | 5.437 | 8.607 | 14.045 | 6.387 | −0.177 | 6.528 | 0.185 | 1.749 |
8 | 2500 | 440 | 1 | 0.974 | 1.225 | 7.169 | 6.327 | 13.496 | 7.440 | −0.124 | 4.374 | 0.196 | 1.830 |
9 | 2500 | 600 | 1 | 1.058 | 1.326 | 8.617 | 9.490 | 18.106 | 8.325 | 0.000 | 3.152 | 0.192 | 1.888 |
10 | 2500 | 760 | 1 | 1.113 | 1.417 | 9.640 | 6.377 | 16.016 | 10.246 | 0.257 | 3.715 | 0.193 | 1.811 |
Correlation | R2 | Camera Setting |
---|---|---|
Correlation (GLCM) vs. Sa | 0.7354 | f-number 8 shutter speed 1/200 s |
Correlation (GLCM) vs. Sq | 0.7438 |
Correlation | R2 | Camera Setting |
---|---|---|
Entropy (GLCM) vs. Sa | 0.8208 | f-number 8 shutter speed 1/50 s |
Entropy (GLCM) vs. Sq | 0.7352 | |
Energy vs. Sp | 0.7347 | f-number 16 shutter speed 1/100 s |
Energy (GLCM) vs. Sp | 0.7202 | |
Energy vs. Sz | 0.7015 | |
Entropy vs. Sz | 0.7354 | |
Entropy (GLCM) vs. Sz | 0.7565 | |
Homogeneity (GLCM) vs. Sz | 0.7704 | |
Energy vs. S10z | 0.8916 | |
Energy (GLCM) vs. S10z | 0.8955 | |
W/B vs. Sdq | 0.8151 | f-number 22 shutter speed 1/100 s |
W/B vs. Sdr | 0.8294 | |
Contrast (GLCM) vs. Sa | 0.749 | f-number 22 shutter speed 1/200 s |
Correlation (GLCM) vs. Sa | 0.806 | |
Contrast (GLCM) vs. Sq | 0.7358 | |
Correlation (GLCM) vs. Sq | 0.8148 | |
Contrast (GLCM) vs. Sp | 0.7368 | |
Correlation (GLCM) vs. Sp | 0.8403 | |
Correlation (GLCM) vs. S10z | 0.7316 |
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Jayabarathi, S.B.; Ratnam, M.M. Correlation Study of 3D Surface Roughness of Milled Surfaces with Laser Speckle Pattern. Sensors 2022, 22, 2842. https://doi.org/10.3390/s22082842
Jayabarathi SB, Ratnam MM. Correlation Study of 3D Surface Roughness of Milled Surfaces with Laser Speckle Pattern. Sensors. 2022; 22(8):2842. https://doi.org/10.3390/s22082842
Chicago/Turabian StyleJayabarathi, Suganandha Bharathi, and Mani Maran Ratnam. 2022. "Correlation Study of 3D Surface Roughness of Milled Surfaces with Laser Speckle Pattern" Sensors 22, no. 8: 2842. https://doi.org/10.3390/s22082842
APA StyleJayabarathi, S. B., & Ratnam, M. M. (2022). Correlation Study of 3D Surface Roughness of Milled Surfaces with Laser Speckle Pattern. Sensors, 22(8), 2842. https://doi.org/10.3390/s22082842