A Statistical Evaluation of the Connection between Underwater Optical and Acoustic Images
Abstract
:1. Introduction
1.1. Overview
1.2. State of the Art
- A first demonstration of the statistical relationship between underwater optical and acoustic images.
- A statistics-based method for validating optical and SAS image pairs as matching or not.
- A shared database of manually reviewed and labeled underwater optical and SAS images in which objects have already been recognized and segmented.
2. System Model
2.1. Main Assumptions
2.2. Preliminaries
2.2.1. Feature Descriptors
2.2.2. Entropy Measures
Algorithm 1 Vector Entropy KL |
Input: feature vectors from the SAS and optical images, X and Y
|
3. Methodology
3.1. Key Idea
3.2. Entropy Matching Decision
3.3. Feature Extraction
3.3.1. Rotation
3.3.2. Scaling
4. Exploration of Statistical Relations between SAS and Optical Images
5. Results
5.1. Dataset
5.2. Feature Analysis
5.3. Entropy Matching
5.4. Information Exchange
5.5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Name | Definition | Observations |
---|---|---|
Ecc | and are equal to the two eigenvalues of the co-variance matrix [13] | |
Perimeter | Perimeter of the object’s contour | |
Comp | A is the area of the contour and is the perimeter | |
cir | is the area of the circle having the same length as the object’s perimeter | |
Solidity | is the area of the convex hull [13] | |
roughness | is the perimeter of the convex hull [13] | |
and | , , | Normalized central moment is , for every pixel , center mass , is 1 if is within the object’s region, and each refers to a central moment and l to the normalized version of lth calculated central moment [2] |
Low Freq Den | is the magnitude of the Fourier coefficients of the centroid distance function and the DFT is implemented with points | |
DFT-skewness | ||
Local curve, polynomial coefficient i [2] | ||
Hist-BAS | Entropy-Angle Feature (EAF) [2] |
Object Type | SAS | Optical |
---|---|---|
Cylinder | 9 | 9 |
Manta Mine | 8 | 13 |
Box | 0 | 6 |
Natural | 25 | 14 |
Direction | Optical to SAS HL | SAS HL to Optical | Optical to SAS SH | SAS SH to Optical | |
---|---|---|---|---|---|
Entropy | |||||
Differential Entropy | sigma20 | localCur6 | l2 | l4 | |
Mutual Information | l4 | l4 | sigma20 | sigma11 | |
Transfer Entropy | localCur1 | localCur4 | l2 | localCur4 | |
Normalized Transfer Entropy | sigma02 | Solidity | l2 | Solidity | |
Vector Entropy | DFT skewness | DFT skewness | roughness | roughness |
Optical to SAS | |||
---|---|---|---|
Positive (HL) | Negative (HL) | Positive (SH) | Negative (SH) |
3.0744 | 5.1850 | 3.3481 | 5.2553 |
SAS to Optical | |||
Positive (HL) | Negative (HL) | Positive (SH) | Negative (SH) |
3.4682 | 4.4457 | 3.4682 | 4.4457 |
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Chinicz, R.; Diamant, R. A Statistical Evaluation of the Connection between Underwater Optical and Acoustic Images. Remote Sens. 2024, 16, 689. https://doi.org/10.3390/rs16040689
Chinicz R, Diamant R. A Statistical Evaluation of the Connection between Underwater Optical and Acoustic Images. Remote Sensing. 2024; 16(4):689. https://doi.org/10.3390/rs16040689
Chicago/Turabian StyleChinicz, Rebeca, and Roee Diamant. 2024. "A Statistical Evaluation of the Connection between Underwater Optical and Acoustic Images" Remote Sensing 16, no. 4: 689. https://doi.org/10.3390/rs16040689
APA StyleChinicz, R., & Diamant, R. (2024). A Statistical Evaluation of the Connection between Underwater Optical and Acoustic Images. Remote Sensing, 16(4), 689. https://doi.org/10.3390/rs16040689