- 【Title】Structural Displacement Estimation by a Hybrid Computer Vision Approach
- 【Abstract】Structural displacement is an important indicator of structural safety in structural health monitoring (SHM). As one of the vision-based methods,
optical flow can provide displacement measurement of pixels in images. However, estimating structural displacement by predicting the optical flow between
the current frame and the initial frame may be subject to limited accuracy due to environmental variations. Alternatively, calculating structural velocity
by predicting the optical flow of adjacent frames and integrating to obtain displacement may introduce displacement drift attributable to cumulative errors.
This study proposes a hybrid structural displacement estimation method to eliminate the effects of environmental variations and cumulative errors.
In comparison to the existing methods, the novelty of the proposed method is to effectively integrate deep learning-based dense optical flow and
correlation template matching (CM), for achieving both high accuracy and improved robustness. Deep learning-based dense optical flow was used for optical
flow prediction between adjacent frames through correlation calculations and iterative updating to obtain the structural velocity.Pyramid-accelerated CM
was employed to locate the regions of interest (ROI) of the structure in each frame, and the structural displacement was then estimated by counting
temporal changes in these locations. By fusing estimated structural velocity and displacement using the Kalman filter, optimized structural displacement
results were obtained, and temporal cumulative errors using dense optical flow could be eliminated. The proposed method was validated in an indoor
shaking table test of a three-story reinforced concrete structure, and an outdoor shaking table test of a cold-formed steel wall system. The results
indicated that the proposed method reduced the root mean square error of estimated displacement by over 89% compared with dense optical flow and by over
36% compared with CM. Furthermore, the proposed method was able to process 1080p high-definition images at a rate of 5.43 frames per second, indicating
its high efficiency for applications.
- 【Keywords】 Computer vision; Displacement estimation; Optical flow; Correlation template matching; Data fusion
- 【Index】
- 【Fulltext】PDF download