Construction safety is vitally important to a construction project in terms of workers'
occupational health, maintaining labor productivity, avoiding schedule delay and financial loss
due to fatal accidents. Despite the importance of construction safety, construction sites have
been suffering from higher hazard rates than other occupational workplaces, because
construction operations are still labor-intensive and are performed by various heavy machines.
Statistics show that the movement of heavy machinery is a main source of on-site hazards, and
frequent interactions between workers and machines will exacerbate such issues. Hence,
monitoring the on-site motion of construction machines is crucial to site safety.
Currently, with extensive installations of surveillance cameras, computer vi...[
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Construction safety is vitally important to a construction project in terms of workers'
occupational health, maintaining labor productivity, avoiding schedule delay and financial loss
due to fatal accidents. Despite the importance of construction safety, construction sites have
been suffering from higher hazard rates than other occupational workplaces, because
construction operations are still labor-intensive and are performed by various heavy machines.
Statistics show that the movement of heavy machinery is a main source of on-site hazards, and
frequent interactions between workers and machines will exacerbate such issues. Hence,
monitoring the on-site motion of construction machines is crucial to site safety.
Currently, with extensive installations of surveillance cameras, computer vision and deep
learning techniques can be adopted to automatically process videos and images captured from
construction sites. Previous studies have attempted to automate construction machine
monitoring, which primarily focused on the location of the whole machine. However,
construction machines operate dynamically with high variability in posture. For example, a machine’s moving parts may swing or rotate and hence strike nearby personnel or objects, even
though the machine stays in a location. Machine poses constitute a significant source of on-site
safety hazards, yet overlooked in traditional safety practices. It is therefore essential to monitor
the poses of construction machines in real-time to ensure site safety.
This research aims to develop approaches to automated construction machine pose
monitoring using computer vision and deep learning techniques to facilitate construction site
safety management. There are three major parts in this research, which are (1) automated
current pose estimation of construction machines, (2) automated future pose prediction of
construction machines, and (3) automated construction site safety evaluation.
For automated current pose estimation of construction machines, a methodology
framework is first developed for automatically estimating the 2D full-body poses of
construction machines in surveillance video frames using computer vision and deep learning
techniques. An image library is built, and machine keypoints are defined. Three deep learning
models are trained and evaluated using the developed dataset. On this basis, 3D full-body poses
of construction machines are estimated by a framework created in this research that employs
deep learning and stereo vision. The framework first fine-tunes a pre-trained deep learning
model to estimate the 2D full-body poses of construction machines, using deep active learning
with a small number of strategically selected training images. Based on the 2D poses, 3D full-body
poses are estimated with the help of stereo camera calibration, coarse-to-fine stereo
matching, and triangulation.
For automated future pose prediction of construction machines, a framework is
introduced to predict construction machine poses based on historical motion data and activity
attributes using a recurrent neural network (RNN), named Gated Recurrent Unit (GRU). A
keypoint-based method is developed for machine activity recognition considering working
patterns and interaction characteristics, which aims to provide contextual information (i.e., activity) to the constructed GRU network and improve the performance of future pose
prediction of construction machines.
For construction site safety evaluation, a quantitative safety evaluation framework is
developed considering geometry and kinematics of dynamic hazard sources (i.e., construction
machines). This framework uses motion data, especially pose data, to extract geometric (i.e.,
3D boundaries of objects) and kinematic information (locations and velocities) of construction
resources. Afterward, potential hazards emitted by dynamic hazard sources are quantified with
the consideration of influential factors, including proximity, relative linear velocity, and
relative rotation velocity, which help proactive safety warning in real-time and provide
numerical results to identify the least safety-awareness worker and the most dangerous place.
All developed approaches are illustrated with related experiments. Compared to current
practices, the proposed research lays the foundation of automated current machine pose
estimation, automated future machine pose prediction, and automated quantitative construction
site safety evaluation. It is expected that this research will improve the quantitative, precise,
and efficient level of safety monitoring applications for construction sites in the future.
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