Automated Intertidal Beach Profile Reconstruction from Timex Video Imagery: A Case Study of Xisha Bay Beach, China
Highlights
- Shore-based video remote sensing allows intertidal topography monitoring with accuracy better than 0.22 m.
- Deep learning accurately detects waterline breakpoints in complex single-pixel-wide video images.
- Target profile topography can be automatically extracted directly from video images without generating a DEM.
- High-frequency intertidal profile reconstruction reveals the spatiotemporal morphodynamical response of sandy beaches.
Abstract
1. Introduction
2. Study Area
3. Data Foundation
3.1. Video Imagery
3.2. Field-Measured Topographic Data
3.3. Hydrodynamic Data
4. Methodology
4.1. Video Imagery Processing
4.2. Training the Stacked Bi-LSTM Model for Waterline Breakpoint Localization
4.3. Assigning Elevations to Waterline Breakpoints
5. Results
5.1. Accuracy Assessment of Waterline Breakpoint Detection
5.2. Reconstruction Results of Intertidal Beach Profiles
6. Discussion
6.1. Comparison of the Obtained Accuracy with Previous Studies
6.2. Advantages and Prospects of the New Methodology
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Profile | Start Latitude (°N) | Start Longitude (°E) | End Latitude (°N) | End Longitude (°E) | Distance to VMS (m) |
|---|---|---|---|---|---|
| P1 | 24.881647 | 118.921764 | 24.880371 | 118.920665 | 228.2 |
| P2 | 24.882907 | 118.919583 | 24.881356 | 118.918893 | 46.8 |
| P3 | 24.883601 | 118.916894 | 24.881955 | 118.916566 | 327.6 |
| P4 | 24.883535 | 118.913646 | 24.882001 | 118.913705 | 652.1 |
| Sample Name | Acquisition Time | Solar Elevation Angle (°) | Beaufort Scale | Classification Result |
|---|---|---|---|---|
| XSW_plan20250603060000_World_strip01.tif | 3 June 2025 06:00 | 8.42 | 3.2 | Favourable illumination; normal-wave conditions |
| XSW_plan20250603060000_World_strip02.tif | 3 June 2025 06:00 | 8.42 | 3.2 | Favourable illumination; normal-wave conditions |
| XSW_plan20250603120000_World_strip03.tif | 3 June 2025 12:00 | 84.61 | 4.5 | Favourable illumination; normal-wave conditions |
| XSW_plan20250603180000_World_strip04.tif | 3 June 2025 18:00 | 6.37 | 6.1 | Favourable illumination; energetic-wave conditions |
| XSW_plan20251210170000_World_strip02.tif | 10 December 2025 17:00 | −0.68 | 7.2 | Unfavourable illumination; energetic-wave conditions |
| XSW_plan20250915070000_World_strip01.tif | 15 September 2025 07:00 | 18.73 | 5.4 | Favourable illumination; normal-wave conditions |
| XSW_plan20250915150000_World_strip02.tif | 15 September 2025 15:00 | 43.26 | 6.7 | Favourable illumination; energetic-wave conditions |
| XSW_plan20250915190000_World_strip03.tif | 15 September 2025 19:00 | −7.92 | 6.3 | Unfavourable illumination; energetic-wave conditions |
| XSW_plan20251210060000_World_strip04.tif | 10 December 2025 06:00 | −4.15 | 3.6 | Unfavourable illumination; normal-wave conditions |
| XSW_plan20251210120000_World_strip01.tif | 10 December 2025 12:00 | 41.02 | 2.5 | Favourable illumination; normal-wave conditions |
| Parameter | Setting |
|---|---|
| Input | Timex image column |
| Output | Land/water probability sequence |
| Data split | 60%/20%/20% |
| Network | 3-layer Bi-LSTM + self-attention |
| Loss | Weighted cross-entropy |
| Class weights | Land = 1.85; water = 0.68 |
| Optimizer | Adam |
| Learning rate | 0.001 |
| Batch size/epochs | 32/100 |
| Dropout | 0.3/0.3/0.2/0.2 |
| Predicted Class | ||||
|---|---|---|---|---|
| Land | Sea | |||
| Land | TP | FN | P | |
| Actual class | Sea | FP | TN | N |
| P′ | N′ | N + P |
| Research Method | Precision | Recall | Accuracy | F1 Score |
|---|---|---|---|---|
| Stacked Bi-LSTM | 0.951 | 0.894 | 0.978 | 0.903 |
| Bi-LSTM | 0.915 | 0.846 | 0.954 | 0.868 |
| SVM | 0.893 | 0.751 | 0.928 | 0.795 |
| Thresholding | 0.812 | 0.705 | 0.875 | 0.799 |
| Validation Period | Date | Profiles Number | ME (m) | MAE (m) | RMSE (m) | Error SD (m) |
|---|---|---|---|---|---|---|
| T1 | 2 August 2023 | 4 | −0.162 ± 0.066 | 0.181 ± 0.090 | 0.212 ± 0.118 | 0.127 ± 0.114 |
| T2 | 27 January 2024 | 4 | −0.229 ± 0.075 | 0.236 ± 0.064 | 0.261 ± 0.047 | 0.105 ± 0.051 |
| T3 | 24 July 2025 | 4 | −0.075 ± 0.076 | 0.132 ± 0.056 | 0.164 ± 0.038 | 0.124 ± 0.061 |
| Overall | / | 12 | −0.155 ± 0.093 | 0.183 ± 0.078 | 0.212 ± 0.080 | 0.119 ± 0.073 |
| Period | Date | Profile | R2 | ME (m) | MAE, 95% CI (m) | RMSE, 95% CI (m) | LoA (m) |
|---|---|---|---|---|---|---|---|
| T1 | 2 August 2023 | P1 | 0.998 | −0.182 | 0.182 (0.175–0.188) | 0.190 (0.183–0.195) | −0.288 to −0.075 |
| T1 | 2 August 2023 | P2 | 0.999 | −0.073 | 0.080 (0.075–0.085) | 0.091 (0.084–0.098) | −0.180 to 0.035 |
| T1 | 2 August 2023 | P3 | 0.997 | −0.162 | 0.163 (0.151–0.174) | 0.192 (0.174–0.208) | −0.363 to 0.038 |
| T1 | 2 August 2023 | P4 | 0.992 | −0.230 | 0.299 (0.276–0.324) | 0.374 (0.345–0.401) | −0.808 to 0.348 |
| T2 | 27 January 2024 | P1 | 0.997 | −0.210 | 0.210 (0.198–0.222) | 0.236 (0.220–0.250) | −0.421 to 0.000 |
| T2 | 27 January 2024 | P2 | 0.998 | −0.264 | 0.264 (0.259–0.269) | 0.268 (0.263–0.273) | −0.355 to −0.173 |
| T2 | 27 January 2024 | P3 | 0.991 | −0.308 | 0.308 (0.297–0.320) | 0.323 (0.312–0.335) | −0.500 to −0.117 |
| T2 | 27 January 2024 | P4 | 0.975 | −0.133 | 0.162 (0.145–0.179) | 0.216 (0.196–0.235) | −0.466 to 0.200 |
| T3 | 24 July 2025 | P1 | 0.992 | −0.015 | 0.078 (0.065–0.094) | 0.154 (0.109–0.198) | −0.315 to 0.285 |
| T3 | 24 July 2025 | P2 | 0.995 | −0.027 | 0.090 (0.082–0.099) | 0.116 (0.103–0.130) | −0.249 to 0.196 |
| T3 | 24 July 2025 | P3 | 0.999 | −0.181 | 0.181 (0.176–0.186) | 0.186 (0.181–0.191) | −0.266 to −0.096 |
| T3 | 24 July 2025 | P4 | 0.987 | −0.079 | 0.179 (0.169–0.190) | 0.201 (0.191–0.211) | −0.442 to 0.284 |
| Uncertainty | Error Training | Error Tests | |
|---|---|---|---|
| Xisha Bay | 1.50 px (0.75 m) | ME = 1.68 px (0.84 m) | ME = 2.51 px (1.25 m) |
| Reference | Location | Imagery | Reconstruction Technique | Reported Vertical Error |
|---|---|---|---|---|
| Present work | Xisha Bay (China) | Timex video imagery | Bi-LSTM image column detection with tide–wave–slope elevation assignment | MAE = 0.183 ± 0.078 m; RMSE = 0.212 ± 0.080 m |
| Uunk et al. (2010) [21] | Egmond (Netherlands) | Argus video imagery | Automated waterline mapping and tidal elevation interpolation | RMS = 0.28 m; automated RMS = 0.34 m |
| Soloy et al. (2021) [38] | Villers-sur-Mer, Étretat, and Hautot-sur-Mer (France) | video imagery | Mask R-CNN water segmentation and water-level assignment | RMSE = 0.22–0.33 m |
| Bishop-Taylor et al. (2019) [60] | Entire Australian coastline | Landsat archive | Tide-model-based waterline compositing for intertidal DEM generation | RMSE = 0.39–0.41 m for tidal flats and sandy shores |
| Chen et al. (2023) [37] | The Wash Bay and Thames Estuary (United Kingdom), east Chongming Island & Sansha Bay (China) | Sentinel-2 time series | Tidal inundation frequency-based topography reconstruction | RMSE ≈ 0.16–0.38 m |
| Chen et al. (2023) [61] | Yangtze Estuary (China) | Sentinel-2 time series | Deep-learning waterline extraction with elevation calibration | RMSE = 0.13 m |
| Xu et al. (2025) [62] | Texas (USA) | Sentinel-2 and water-level data | Coastline extraction with water-level-based DEM construction | Accuracy ≈ 0.42 m |
| Pool et al. (2025) [63] | Six sites in Brazil and New Zealand | Sentinel-2 imagery | Adapted waterline method with kriging interpolation | RMSE = 0.14–0.24 m |
| Ming et al. (2025) [64] | Maowei Sea (China) | ICESat-2 and Sentinel-2 | ICESat-2-calibrated inundation-frequency mapping | RMSE ≤ 0.075 m |
| Lee et al. (2017) [65] | Tidal flats on the west coast of South Korea | TanDEM-X SAR | InSAR-based tidal-flat DEM reconstruction | RMSE ≈ 0.20 m |
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Liu, K.; Qi, H.; Yin, H.; Cai, F.; Liu, G.; Zhao, S.; Zheng, J. Automated Intertidal Beach Profile Reconstruction from Timex Video Imagery: A Case Study of Xisha Bay Beach, China. Remote Sens. 2026, 18, 1893. https://doi.org/10.3390/rs18121893
Liu K, Qi H, Yin H, Cai F, Liu G, Zhao S, Zheng J. Automated Intertidal Beach Profile Reconstruction from Timex Video Imagery: A Case Study of Xisha Bay Beach, China. Remote Sensing. 2026; 18(12):1893. https://doi.org/10.3390/rs18121893
Chicago/Turabian StyleLiu, Kai, Hongshuai Qi, Hang Yin, Feng Cai, Gen Liu, Shaohua Zhao, and Jixiang Zheng. 2026. "Automated Intertidal Beach Profile Reconstruction from Timex Video Imagery: A Case Study of Xisha Bay Beach, China" Remote Sensing 18, no. 12: 1893. https://doi.org/10.3390/rs18121893
APA StyleLiu, K., Qi, H., Yin, H., Cai, F., Liu, G., Zhao, S., & Zheng, J. (2026). Automated Intertidal Beach Profile Reconstruction from Timex Video Imagery: A Case Study of Xisha Bay Beach, China. Remote Sensing, 18(12), 1893. https://doi.org/10.3390/rs18121893

