SDNET2021: Annotated NDE Dataset for Subsurface Structural Defects Detection in Concrete Bridge Decks
Abstract
:1. Introduction
2. Experimental Program
2.1. NDE Data Collection
2.1.1. IRT Data Collection
2.1.2. IE Data Collection
2.1.3. GPR Data Collection
2.2. Ground Truth
2.3. NDE Data Acquisition Conditions
2.4. Quality Assessment of Dataset
2.4.1. Signals
2.4.2. IRT Quality Assessment
3. Results and Discussion
3.1. Data Annotation
3.2. IRT Image Annotation
3.3. IE Annotation
3.4. GPR
- , are the signal discretized sub-divisions for longitudinal and transverse signals respectively,
- , are the length of the signal scans for longitudinal and transverse signals respectively,
- n is the number of signal amplitudes,
- , are the initial coordinate coordinates of the longitudinal and transverse scans, respectively.
- , are the cumulative coordinates of the longitudinal and transverse scans, respectively.
3.5. SDNET2021 Validation, Processing and Evalsuation
3.5.1. IRT Data
3.5.2. IE Data
3.5.3. GPR Signal Data
3.6. Significance and Potential Use of Dataset
- Developing a pre-trained model with annotated NDE dataset will be very useful in bridge evaluation. In addition, this dataset will provide a basis for developing pre-trained AI models for IE, GPR, and IRT datasets in classifying and detecting bridge defects.
- SDNET2021 also provides useful data for adopting data fusion in defect detection. Data fusion requires merging two or more NDE data to develop more accurate prediction and detection models. For example, the SDNET2021 dataset, which has been collected for IE, GPR, and IRT, could be fused to improve the detectability of defects compared to when adopted independently.
- IRT, IE, and GPR datasets have been annotated with validated ground truth. This dataset is a benchmark for evaluating bridge deck sub-surface defects.
- The dataset provides a means for continued concrete bridge deck evaluation with the aid of AI models, especially the use of convolutional neural network (CNN) models, which are still being explored. CNN use is promising for providing an unbiased and inexpensive way to analyze and interpret bridge evaluation data without operator input, compared to the conventional method of using expert evaluation.
- This reliable dataset will be available to professionals that need to investigate the relationships between concrete deck surfaces and subsurface defects using AI models.
- The dataset will be an excellent resource for developing data fusion of the different NDE data types, which will help professionals investigate the reliability and precision of one method relative to the other.
- A deep learning model trained on SDNET2021 can be used to investigate the detection of sub-surface delamination of varying sizes and depths.
4. Conclusions
- Providing data for in-service bridge decks,
- Benchmarking dataset for evaluating bridge deck sub-surface defects,
- Developing CNN for defect detection and classification,
- Being available to professionals for investigating the relationships between surfaces and subsurface defects using AI models,
- Developing data fusion of different NDE data types,
- Investigating the detection of sub-surface delamination of varying sizes and depths.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Data Type and Description | Defect Types | Material or Structure | Annotation Method | Limitation | References |
---|---|---|---|---|---|
RGB Images (Surface Defects) | |||||
Image-56,000 sub-images (256 × 256 px) | Crack (widths from 0.06 to 25 mm) | Concrete bridge decks, walls, and pavements | Labeling | Limited to crack defects only. Not validated with ground truth. | [3,4] |
40,000 images with 227 × 227 pixels generated by a 4032 × 3024 resolution camera | Cracks on buildings | METU campus buildings | Labeling | Dataset is based on buildings only. | [16] |
CFD contains 118 RGB and AigleRN database contains 38 gray-level images. | Cracks | Asphalt pavements | Labeling | Only surface defects. | CrackForest Dataset and AigleRN [17] |
600 RGB images | Cracks | Pavement | Pixel level annotation | Only surface defects. | EdmCrack600 [7] |
At least 17,754 RGB images | Cracks, spall, exposed bars, corrosion stain | Concrete bridges | Bounding box labeling | Only surface defects. | COncrete DEfect BRidge IMage (CODEBRIM) dataset [18] |
6500 3D pavement images | Cracks | Asphalt pavement | Labeling | Not publicly available and limited to asphalt pavement. | [19] |
7237 RGB images of pavement sections extracted from Google Map | Structural cracks | Asphalt pavement surface | Bounding box labeling | Not publicly available. Dataset not validated with ground truth. Without delamination defects. | [20] |
NDE (IRT/IE/GPR) Subsurface Defects | |||||
Impact Echo- 2016 IE signals. | Debonding and subsurface defects | Laboratory concrete specimens | Signal labeling | Limited to laboratory specimens. Dataset not validated with ground truth. | [1,2] |
GPR signals | Chloride migration detection | Laboratory concrete decks | Signal labeling | Limited to laboratory specimens and validated with a destructive method (core samples). | [8] |
GPR signals collected during the FHWA’s LTBP Program | Characterize the corrosive environment | Asphalt and concrete bridge decks | Signal Labeling | Dataset was not validated with ground truth but was validated with other NDE methods and bridge decks. | [21] |
GPR signals converted into 3992 grayscale images | Rebar Detection and localization | Residential buildings under construction | Bounding box labelling | Dataset not validated with ground truth. | [10] |
500 infrared images. | Sub-surface delamination | Reinforced concrete bridges | Semantic pixel-wise image labeling | Dataset is not publicly available. and was not validated. | [5] |
Bridge ID | Structure Number (Year Built) | Width (m) × Length (m) | Deck Area (sqm) | Delamination % |
---|---|---|---|---|
FR SB | 0029168629 L (1971) | 12.7 × 64 | 816 | 18% 40.4% |
FR NB | 0029168632 R (1971) | 12.7 × 64 | 816 | 23% 31.5% |
PR NB | 0029179087 L (1973) | 11.3 × 141.7 | 1806 | 24.56% 26.1% |
PR M | 0029179123 M (1973) | 7.3 × 111.3 | 977 | 21.0% 34.5% |
PR SB | 0029179147 R (1973) | 14.9 × 120.4 | 1974 | 3.5% 30% |
Bridge ID | Time | Temperature (°C) | Sun Light Exposure (Hours) | Humidity (%) | Wind Speed (kmph) |
---|---|---|---|---|---|
FR SB | 9:55–10:25 a.m. | 26.0 | 3.0 | 47.0 | 10.5 |
FR NB | 10:26–10:44 a.m. | 26.7 | 3.5 | 44.0 | 12.9 |
PR NB | 11:36–11:55 a.m. | 27.0 | 4.5 | 47.0 | 12.9 |
PR MD | 12:09–12:32 p.m. | 27.8 | 5.0 | 44.5 | 14.5 |
PR SB | 12:34–12:55 p.m. | 27.8 | 5.5 | 45.0 | 16.1 |
Characteristics | Specifications |
---|---|
Thermal Resolution: | 640 × 512 pixels |
Full Frame Rates: | 30 Hz (NTSC) 25 Hz (PAL). |
Spectral Band: | 7.5–13.5 μm. |
Pixel Pitch: | 17 μm. |
Thermal Imager/Detector type: | Uncooled VOx Microbolometer. |
Digital Zoom | 2×, 4× |
Field of View | 24° × 19° |
Bridge ID | Date Collected | Temperature (°C) | Humidity (%) | Deck Condition |
---|---|---|---|---|
FR SB | 6 July 2020 | 18.3 | 67.0 | Dry |
FR NB | 7 July 2020 | 27.8 | 43.0 | Dry |
PR NB | 8 July 2020 | 25.6 | 66.5 | Dry |
PR M | 7 July 2020 | 23.1 | 55.0 | Dry |
PR SB | 9 July 2020 | 22.8 | 56.0 | Dry |
Data Collection | Data Types and Formats | FR-NB | FR-SB | PR-NB | PR-SB | PR-MD | Number of Files |
---|---|---|---|---|---|---|---|
Images (Round 1) | Thermal Image (JPEG): | 122 | 66 | 76 | 95 | 121 | 480 |
Images (Round 2) | Thermal Image (JPEG): | 76 | 84 | 48 | 152 | 100 | 460 |
Images (Round 3) | Thermal Image (JPEG): | 19 | 16 | 24 | 31 | 34 | 124 |
GPR | Downloaded (csv,DZT,DZX) | 28 | 29 | 50 | 53 | 49 | 209 |
IE | Downloaded (lvm) | 415 | 415 | 440 | 542 | 466 | 2275 |
NDE Type | Condition Type | Refences | |
---|---|---|---|
IRT | Temperature | 26–27.8 °C | [23,24] |
Solar exposure | Minimum of 6 h | ||
Wind speed | 11–16 km/h | ||
Ambient temperature | No testing when tempt is less than 0 °C | ||
UAS AGL | 15–18 m AGL | ||
Image overlap | 65–80% | ||
IE | Temperature | 18.3–27.8 °C | [25,26] |
Deck condition | Concrete surface-dried and cleared of debris. | ||
Grid size | 0.3 m × 0.3 m test grid | ||
Contact time | |||
GPR | Temperature | 18.3–27.8 °C | [27,28] |
Deck condition | Concrete surface-dried and cleared of debris. | ||
Antenna | 2600 MHz. Equipment: GSSI SIR-3000 Data Acquisition System. GPR Antenna | [21] |
Metrics % | Excellent/Good % | Fair % | Poor/Bad |
---|---|---|---|
Image Data Quality | |||
Piqe | 97 | 3 | 0 |
Niqe | 82 | 18 | 0 |
Brisque | 100 | 0 | 0 |
GPR and IE signals | |||
Null Values | 100 | 0 | 0 |
Missing values | 100 | 0 | 0 |
Duplicate values | 100 | 0 | 0 |
Bridge ID | Translation (X, Y) (Pixels) | Rotation (d) (degree) | Scale (a,b) |
---|---|---|---|
FR SB | [−474, 220] | −4.5 | 1.33 |
FR NB | [−200, 105] | −1.9 | 1.12 |
PR NB | [−105, −5] | −87.4 | 2.6 |
PR M | [0, 0] | 2.8 | 1 |
PR SB | [−360, −20] | −2 | 2.88 |
GPR data | ||||||
classes of delamination | PR M | FR NB | PR NB | PR SB | FR SB | Total signals |
class 1 | 171,085 | 66,334 | 94,978 | 61,732 | 54,030 | 448,159 |
class 2 | 56,528 | 39,577 | 26,590 | 38,510 | 29,885 | 177,483 |
class 3 | 13,478 | 6945 | 443 | 6674 | 7392 | 37,460 |
Total | 241,091 | 141,500 | 141,500 | 106,916 | 91,307 | 663,102 |
IE data | ||||||
classes of delamination | PR M | FR NB | PR NB | PR SB | FR SB | Total signals |
class 1 | 291 | 301 | 273 | 257 | 257 | 1379 |
class 2 | 61 | 49 | 74 | 213 | 96 | 493 |
class 3 | 12 | 13 | 16 | 13 | 10 | 64 |
Total | 364 | 363 | 363 | 483 | 363 | 1936 |
IRT data | ||||||
classes of delamination | PR M | FR NB | PR NB | PR SB | FR SB | Total pixels |
class 1 | 898,758 | 344,771 | 802,348 | 572,455 | 244,265 | 2,862,597 |
class 2 | 298,544 | 189,280 | 215,113 | 411,147 | 138,229 | 1,252,313 |
class 3 | 79,294 | 80,619 | 49,640 | 200,968 | 55,249 | 465,770 |
Total Pixels | 1,276,596 | 614,670 | 1,067,101 | 1,184,570 | 437,743 | 4,580,680 |
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Ichi, E.; Jafari, F.; Dorafshan, S. SDNET2021: Annotated NDE Dataset for Subsurface Structural Defects Detection in Concrete Bridge Decks. Infrastructures 2022, 7, 107. https://doi.org/10.3390/infrastructures7090107
Ichi E, Jafari F, Dorafshan S. SDNET2021: Annotated NDE Dataset for Subsurface Structural Defects Detection in Concrete Bridge Decks. Infrastructures. 2022; 7(9):107. https://doi.org/10.3390/infrastructures7090107
Chicago/Turabian StyleIchi, Eberechi, Faezeh Jafari, and Sattar Dorafshan. 2022. "SDNET2021: Annotated NDE Dataset for Subsurface Structural Defects Detection in Concrete Bridge Decks" Infrastructures 7, no. 9: 107. https://doi.org/10.3390/infrastructures7090107
APA StyleIchi, E., Jafari, F., & Dorafshan, S. (2022). SDNET2021: Annotated NDE Dataset for Subsurface Structural Defects Detection in Concrete Bridge Decks. Infrastructures, 7(9), 107. https://doi.org/10.3390/infrastructures7090107