A Multispectral Bayesian Classification Method for Increased Acoustic Discrimination of Seabed Sediments Using Multi-Frequency Multibeam Backscatter Data
Abstract
:1. Introduction
2. Study Area and Dataset
2.1. Bedford Basin
2.2. Patricia Bay
2.3. Multispectral Data
3. Theory and Method
3.1. Acoustic Theory
3.2. Acoustic Data Processing Applied to the R2Sonic 2026
3.3. Bayesian Method
3.4. Multispectral Seabed Classification
- Step 1.
- In this step, the Bayesian method is applied to the backscatter histograms per frequency (see Section 3.3). As such, each frequency results in its own classification map (Figure 2).
- Step 2.
- This step calculates the spatial matching between classes obtained from the classification at the individual frequencies (Figure 2). The results are stored in the so-called matching matrix. Each column of the matching matrix represents the locations classified by , while each row represents the locations classified by .
- Step 3.
- The third step is to test whether or not the combinations found are statistically significant. A statistical significance test is performed to assess the actual existence of classes gained by combining the classification results of different frequencies. This statistically corresponds to the null hypothesis , stated as follows: The AC combination per frequency pair represents an acoustic class. The alternative hypothesis is that the AC combination is not statistically significant and due to the occurrence of misclassification. The null hypothesis needs to be tested for every possible acoustic class combination per frequency pair. This is thus performed on all individual elements of the matching matrix (i.e., the nine elements with , for the example considered in Figure 2).
- The left-hand side of Equation (12) represents an empirical probability based on the classified real data, whereas the right-hand side expresses a theoretical probability based on the Bayesian decision rule. Therefore, if the empirical probability exceeds the theoretical ones, the null hypothesis is accepted and hence a significant multispectral acoustic class (MAC) is identified. This is in agreement with the statistical significance test, that whenever a variable is larger than its standard deviation, it is considered to be statistically significant.
- From Equation (12) it follows that, if the occurrence probability of the combination of and , obtained at f and , is larger than the theoretical probability that this combination occurs due to at least one misclassification (either on , or both), then the null hypothesis is accepted. This combination is thus statistically significant and accepted as a MAC. The rejected combinations are supposed not to be statistically significant.
- Step 4.
- This step generates the acoustic multispectral classification map, i.e., a MAC to each location within the survey area is assigned. In case only two frequencies are employed (as shown in Figure 2), a MAC is assigned to each location according to the corresponding AC combination. Considering n frequencies, the number of frequency pairs increases to , and the generation of the AC map becomes k-dimensional. That means that each location corresponds to k AC combinations. Let us assume that, for each location, we have k numbers of acoustic candidates, i.e., . The most probable candidate is selected to be the final MAC of that location. This is achieved based on the probabilities of the correct classification of frequency pairs. For example, the theoretical probability of the correct classification of the frequency pair is with . Per location, each acoustic candidate has thus a probability of occurrence . The acoustic candidate with the highest possible probability is considered to be the most probable one, and hence the corresponding MAC of the frequency pair is obtained. This will be followed to make a unique classification map over available frequency pairs.
4. Results
4.1. Verification and Interpretation of Acoustic Data Processing
4.2. Application of the Bayesian Method to Multispectral Backscatter Data
4.2.1. Bedford Basin
4.2.2. Patricia Bay
4.3. Evaluation of the Benefit of Using Multiple Frequencies
4.3.1. Bedford Basin
4.3.2. Patricia Bay
4.4. Combination of Multiple Frequencies
4.4.1. Bedford Basin
- more temporarily and spatially stable or
- acoustically less affected to slight changes in the sediment composition; for example, deposition of small amount of sand on a muddy sediment affects the resulting backscatter more than that on gravelly sediment does.
4.4.2. Patricia Bay
4.5. Correspondence between Ground-Truth and Acoustic Classification
4.5.1. Bedford Basin
4.5.2. Patricia Bay
5. Discussion
- (1)
- Combining 100 and 400 kHz, in general, reveals the most additional information about the seabed. This is in agreement with the study of Hughes Clark [17], who pointed out that at least a frequency spacing of one octave is required to use the frequency dependency of backscatter but that a separation of two octaves (100 vs. 400 kHz ) is desired.
- (2)
- The use of multiple frequencies allows for a better acoustic discrimination of seabed sediments than single-frequency data. For all datasets, in particular for the Bedford Basin, more MACs are revealed than ACs by applying the multispectral classification algorithm. However, careful interpretation of the additional classes is required. There are three possible reasons: (i) the relationship between roughness and acoustic wavelength, (ii) a dominating scattering regime, and (iii) signal penetration. The first and second issue reflect the additional discrimination of the surficial sediments, whereas the third reason combines information from different depths at the seabed. Insights into the relative importance of the above factors are needed to interpret the MAC map.
- (3)
- The optimal frequency selection for ASC depends on the local seabed. The results from two different study areas have shown that the most discriminative frequency and the benefit of using multiple frequencies for ASC highly depends on the local seabed, and a general conclusion cannot be drawn. In the Bedford Basin, a significantly increased discrimination performance is observed, which seems to be mainly based on the increasing signal penetration from 400 to 100 kHz. In Patricia Bay, we observed only a slightly increased discrimination performance. This might result from the fact that the finest sediment in that area is muddy sand and the corresponding signal penetration does not differ very much for the different frequencies. However, we need to consider that the 10-year time difference between ground truthing and acoustic data acquisition results in unknown uncertainties. The surficial sediment distribution might have changed within this period.
Benefits Versus Drawbacks of Multispectral Backscatter
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Frequency | 100 kHz, 200 kHz, 400 kHz |
Number of beams | 256 |
Beam width ( and ) | 2 × 2 (100 kHz), 1 × 1 (200 kHz), × (400 kHz) |
Swath coverage | 65 for starboard and port side |
Nominal pulse Length | 150 s |
Pulse type | Shaped continuous wave |
Receiver Bandwidth B | 7500 Hz |
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Gaida, T.C.; Tengku Ali, T.A.; Snellen, M.; Amiri-Simkooei, A.; Van Dijk, T.A.G.P.; Simons, D.G. A Multispectral Bayesian Classification Method for Increased Acoustic Discrimination of Seabed Sediments Using Multi-Frequency Multibeam Backscatter Data. Geosciences 2018, 8, 455. https://doi.org/10.3390/geosciences8120455
Gaida TC, Tengku Ali TA, Snellen M, Amiri-Simkooei A, Van Dijk TAGP, Simons DG. A Multispectral Bayesian Classification Method for Increased Acoustic Discrimination of Seabed Sediments Using Multi-Frequency Multibeam Backscatter Data. Geosciences. 2018; 8(12):455. https://doi.org/10.3390/geosciences8120455
Chicago/Turabian StyleGaida, Timo C., Tengku Afrizal Tengku Ali, Mirjam Snellen, Alireza Amiri-Simkooei, Thaiënne A. G. P. Van Dijk, and Dick G. Simons. 2018. "A Multispectral Bayesian Classification Method for Increased Acoustic Discrimination of Seabed Sediments Using Multi-Frequency Multibeam Backscatter Data" Geosciences 8, no. 12: 455. https://doi.org/10.3390/geosciences8120455
APA StyleGaida, T. C., Tengku Ali, T. A., Snellen, M., Amiri-Simkooei, A., Van Dijk, T. A. G. P., & Simons, D. G. (2018). A Multispectral Bayesian Classification Method for Increased Acoustic Discrimination of Seabed Sediments Using Multi-Frequency Multibeam Backscatter Data. Geosciences, 8(12), 455. https://doi.org/10.3390/geosciences8120455