Extending Effective Dynamic Range of Hyperspectral Line Cameras for Short Wave Infrared Imaging
Abstract
:1. Introduction
2. Materials and Methods
2.1. Hyperspectral Camera
2.2. Illumination Source
2.3. Reference Target
2.4. Experiment Setup
2.5. Test Cases
2.5.1. Case 1: Detection of Plastic in Food Waste
2.5.2. Case 2: Polymer Classification
2.6. Sample Preparations
2.6.1. Test Case 1
2.6.2. Test Case 2
2.7. Dark Current
2.8. Dynamic Range of an Analyzed Surface
2.9. Dynamic Range of a Camera
2.10. Multi-Exposure Method
2.11. Spectral Calibration
2.12. Data Preparation
2.12.1. Test Case 1
2.12.2. Test Case 2
2.13. Principal Component Analysis
2.14. Support Vector Machines
3. Results and Analysis
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Sample | Description |
---|---|
a–d | The left half of the samples includes general plastic packaging of different colors and types and plastic shopping bags from grocery stores; the right half of the samples includes coarse black plastic. |
e–h | The left half of the samples includes general plastic packaging of different colors and types and plastic shopping bags from grocery stores; the right half of the samples includes hand-picked moderately decomposed food items. |
i–k | The samples are composed of completely decomposed food waste from which it is not possible to identify any individual food item. |
Recycling Number | Abbreviation | Polymer Name |
---|---|---|
1 | PETE or PET | Polyethylene terephthalate |
2 | HDPE or PE-HD | High-density polyethylene |
3 | PVC or V | Polyvinyl chloride |
4 | LDPE or PE-LD | Low-density polyethylene |
5 | PP | Polypropylene |
6 | PS | Polystyrene |
Sample | Description |
---|---|
1 | This sample was prepared with all 7 classes of plastics with the aim to attain high DR. The sample contained plastics of different colors. |
2–6 | These samples were composed of LDPE (4). |
7–10 | These samples were composed of PVC (3). |
11–13 | These samples were composed of black plastics. |
14–17 | These samples were composed of PETE (1). |
18–21 | These samples were composed of HDPE (2). |
22–25 | These samples were composed of PP (5). |
26–29 | These samples were composed of PS (6). |
Data Class | Training Vectors | Test Vectors | Total |
---|---|---|---|
Food | 2620 | 500 | 3120 |
Bright plastic | 1900 | 500 | 2400 |
Black plastic | 1000 | 200 | 1200 |
Polymer | Training Vectors | Test Vectors | Total |
---|---|---|---|
PETE (1) | 2216 | 200 | 2416 |
HDPE (2) | 2180 | 200 | 2380 |
PVC (3) | 2211 | 200 | 2411 |
LDPE (4) | 2191 | 200 | 2391 |
PP (5) | 2251 | 200 | 2451 |
PS (6) | 2236 | 200 | 2436 |
Black plastic | 2091 | 200 | 2291 |
3PC Confusion Matrix | |||||||||
HDR | Non-HDR | ||||||||
Actual | Food | Bright Plastic | Black Plastic | Actual | Food | Bright Plastic | Black Plastic | ||
Predict | Predict | ||||||||
Food | 485 | 9 | 0 | Food | 468 | 41 | 7 | ||
Plastic | 15 | 491 | 200 | Plastic | 32 | 459 | 193 | ||
4PC confusion Matrix | |||||||||
HDR | non-HDR | ||||||||
Actual | Food | Bright Plastic | Black Plastic | Actual | Food | Bright Plastic | Black Plastic | ||
Predict | Predict | ||||||||
Food | 482 | 6 | 0 | Food | 464 | 37 | 8 | ||
Plastic | 18 | 494 | 200 | Plastic | 36 | 463 | 192 | ||
5PC confusion Matrix | |||||||||
HDR | non-HDR | ||||||||
Actual | Food | Bright Plastic | Black Plastic | Actual | Food | Bright Plastic | Black Plastic | ||
Predict | Predict | ||||||||
Food | 483 | 10 | 0 | Food | 481 | 12 | 0 | ||
Plastic | 17 | 490 | 200 | Plastic | 19 | 488 | 200 |
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Shaikh, M.S.; Jaferzadeh, K.; Thörnberg, B. Extending Effective Dynamic Range of Hyperspectral Line Cameras for Short Wave Infrared Imaging. Sensors 2022, 22, 1817. https://doi.org/10.3390/s22051817
Shaikh MS, Jaferzadeh K, Thörnberg B. Extending Effective Dynamic Range of Hyperspectral Line Cameras for Short Wave Infrared Imaging. Sensors. 2022; 22(5):1817. https://doi.org/10.3390/s22051817
Chicago/Turabian StyleShaikh, Muhammad Saad, Keyvan Jaferzadeh, and Benny Thörnberg. 2022. "Extending Effective Dynamic Range of Hyperspectral Line Cameras for Short Wave Infrared Imaging" Sensors 22, no. 5: 1817. https://doi.org/10.3390/s22051817
APA StyleShaikh, M. S., Jaferzadeh, K., & Thörnberg, B. (2022). Extending Effective Dynamic Range of Hyperspectral Line Cameras for Short Wave Infrared Imaging. Sensors, 22(5), 1817. https://doi.org/10.3390/s22051817