1. Introduction
Road transport remains the primary mode for moving freight and passengers in most countries. Like any infrastructure, roads deteriorate over time due to traffic loads and environmental conditions. As part of asset management programs, road agencies invest considerable effort and resources in assessing pavement surface conditions to ensure serviceability. This data supports informed decisions on maintenance and repair [
1,
2].
Roadway safety is a major global concern due to the high number of annual fatalities and injuries. Flexible pavements form the backbone of land transportation networks, playing a crucial role in supporting national economies and providing socio-economic benefits [
2,
3,
4].
Traditionally, pavement evaluations depended on visual assessments by specialists and the manual recording of surface conditions for database entry. Recently, automated systems have emerged, using high-resolution vehicle-mounted cameras, digital imaging, and laser sensors to enhance accuracy and reduce subjectivity. However, these ground-based methods remain costly, labor-intensive, time-consuming, and sometimes hazardous for inspectors. They also require specialized personnel and may introduce spatial and assessment errors [
5,
6].
Pavement maintenance aims to preserve service conditions with minimal disruption to traffic flow [
7,
8]. In recent years, unmanned aerial vehicles (UAVs) have become valuable tools for 3D modeling, mapping, and pavement inspection [
9,
10,
11]. UAV-captured imagery can be processed to create realistic 3D models, offering detailed insights into pavement conditions. These models help engineers detect issues early and take timely maintenance actions, improving safety and road longevity [
12,
13,
14].
Beyond technical efficiency, UAV-based inspections offer environmental advantages. By reducing the reliance on fuel-powered vehicles and minimizing traffic disruptions, UAVs contribute to lower greenhouse gas emissions and a smaller carbon footprint. This shift aligns with global sustainability goals, particularly in environmentally conscious urban planning. Research indicates that UAV inspections can reduce carbon emissions by up to 90% compared to traditional methods [
15,
16,
17]. Integrating UAVs into pavement management systems supports both technical performance and environmental responsibility [
18].
The UAV method not only improves the inspection accuracy and efficiency but also supports sustainable pavement maintenance. By accurately identifying damaged areas, it facilitates targeted rehabilitation, often generating reclaimed asphalt pavement (RAP). These materials can be recycled through plant-mixed cold recycling with emulsified asphalt. The quality of recycled mixes depends on the condition of the original materials, highlighting the importance of a precise pavement evaluation [
19,
20].
2. Related Works
Tan and Li [
9] achieved an accuracy of 1.54 cm in the 3D model created from UAV images, which they used to find road pavement damage with an error rate of 1 cm. Feitosa et al. [
10] reviewed the existing research on using UAVs for pavement inspections and noted that recent studies show an accuracy of around 1 cm for 2D measurements and depth measurements in 3D model pavement inspections. Feitosa et al. [
10] provided a critical review of the literature on the use of UAVs in pavement inspections and stated that the latest studies indicate an accuracy level of about 1 cm for 2D measurements and depth measurements in the use of the 3D model for pavement inspections. Romero-Chambi et al. [
7] compared the use of the 3D model obtained from UAV images taken at different altitudes and demonstrated that 3D characteristics can be measured in the flexible pavements with errors of about 1 cm. Silva et al. [
13] concentrated on using drones and deep learning algorithms to tackle the difficulties associated with road maintenance. This approach’s guarantee was proven in a case study employing the PANGEA multi-agent system, which achieved an accuracy of over 95%. This work offers a major step toward more effective and economical road management by highlighting the possibility for more innovation in both the detection models and the drone-based data-gathering procedure. Nappo et al. [
21] presented a methodology for detecting asphalt road pavement damage by deriving a hotspot map from 3D point clouds, successfully identifying areas with significant deviations from the reference road surface where anomalies were expected. The proposed approach showed a strong consistency with manually detected damage, validating the effectiveness of the method. The multi-criteria classifier demonstrated the ability to detect longitudinal and transverse cracks wider than 1 cm; though some false positives were observed. These errors were primarily caused by random noise in the point cloud, the presence of concrete structures or ditches at the road edges, and smaller fractures that the procedure could not fully detect. More testing is needed to improve the limits for point clouds with different densities and resolutions, but the results show that the method can successfully find road damage without needing to know what type of damage it is or where it is located.
Recent research has also emphasized the environmental implications of UAV-based pavement inspection. Feitosa et al. [
10] pointed out that UAVs enhance data accuracy while simultaneously mitigating environmental effects by obviating the necessity for a fuel-dependent terrestrial survey apparatus. Santos et al. [
16] additionally observed that UAVs contribute to the reduction in greenhouse gas emissions by decreasing car traffic and lowering on-site durations. Aurangzeb et al. [
17] reported that drone-assisted road inspection initiatives had achieved a decrease of up to 90% in carbon emissions relative to traditional techniques. Wang et al. [
18] consider UAVs as a crucial element of sustainable infrastructure monitoring. These contributions illustrate the dual advantage of UAVs in enhancing both technological precision and environmentally sustainable maintenance procedures.
Most previous studies agreed that adding ground control points (GCPs) is expected to increase the accuracy of the generated models, mainly for use on road pavements that include features or reference points that are accessible before taking images [
7,
9,
10,
22,
23].
In the field of mapping, unmanned aerial vehicle (UAV) technology has become one of the most quickly emerging technologies and one of the most widely employed technologies. UAVs are widely used in civilian applications as well as applications for the Department of Survey and Mapping [
24,
25]. Therefore, to guarantee accuracy while using a UAV to inspect flexible pavements, ground control points (GCPs) are used [
7,
9,
10,
26]. This approach will increase the accuracy of the images that are used to identify pavement issues, such as cracks, potholes, and pavement surface erosion [
26]. Using photogrammetry software can help create detailed maps, height models, or 3D models of the project area by processing the necessary data. The maps can be employed for data extraction purposes, such as obtaining volumetric measurements or extremely accurate distances. Drones are able to fly at far lower altitudes than manned flights or satellite imagery, which allows for the collection of high-resolution, high-accuracy data that is significantly quicker, less expensive, and independent of climatic factors such as cloud cover [
27,
28].
The pavement may deteriorate and require expensive repairs and resurfacing if these distresses are not addressed and remedied. Because these losses are cumulative, it is essential to perform maintenance at the appropriate time to prevent further deterioration [
29]. As shown in
Figure 1, there are several cases of flexible pavement distress, such as rutting [
24], cracks [
22], and patches and potholes [
30], along with the various symptoms of this condition. The identification and repair of these distresses is essential for the preservation of the integrity of the pavement, the safety of the pavement, and the low costs of the maintenance [
12,
29].
3. Materials and Methods
The method employed in this study involves a structured process to evaluate flexible pavement distress using UAV-based imaging and ground control points (GCPs). It integrates both fieldwork and data processing to ensure accurate results. The process begins with site reconnaissance and planning, followed by data collection and image capture using UAVs. Data is then processed using Agisoft Photoscan Agisoft (Metashape Professional (64 bit)) software to generate a 3D model, which is analyzed to identify and quantify pavement distress. The following steps outline the detailed procedure used in this method [
31].
The first step is related to site reconnaissance and planning. It consists of some actions, such as selecting the area of study, choosing the location of ground control points (GCPs), marking GCPs, and monitoring them using a Spectra Precision SP60 GNSS receiver (Spectra Geospatial, Westminster, CO, USA). The second step is data collection, involving a manual measurement method using manual measuring tools, such as a meter, scale, ruler, and string, and preparing for the process of photo-graphing the study area using UAVs, which includes selecting a suitable drone and a suitable time for photographing. The third step is capturing the images from UAVs and processing the data by using the Agisoft Photoscan program. The last step involves the analysis and comparison of data to obtain the results.
This methodology not only ensures high technical accuracy but is also deliberately designed to reinforce environmental sustainability. By utilizing UAVs instead of conventional ground-based inspection methods, the workflow minimizes fuel consumption, reduces vehicle emissions, and avoids unnecessary disruption to local traffic and the surrounding environment. As such, the methodology itself reflects a low-carbon approach to pavement assessment—one that aligns with sustainable infrastructure practices and current global environmental priorities [
15,
16,
17,
18].
3.1. Study Area
The selected area of the case study is a part of the road located at the part of Al-Dahrieh International Stadium Street/Hebron, Palestine. The geographical location of the beginning of the study area lies at 31°25′22.8″ N and 34°57′06″ E, and the geographical location of the end of the study area lies at 31°25′12.8″ N and 34°56’24.6″ E. This street was chosen due to the lack of vehicles passing on it compared to the main roads, and it is easy to perform the manual measuring for pavement detection on it (
Figure 2).
Paved roads serve a wide range of transportation needs across different environmental and operational conditions. Roads that have been recently built or that have been well maintained should have great surface conditions and allow for traffic that is both smooth and safe. Nevertheless, traffic, weather, and poor driving habits destroyed the paved road surface. If there is significant traffic and frequent use, roads will sustain damage more quickly and frequently. Water trapping on the road can cause ruts and potholes. The paved road had surface distress, which made it impossible for the local community to interact with one another in their day-to-day activities. The study locations included a few examples of potholes. The paved road had holes in its surface where the potholes were located. Some examples of potholes that were found in this research are depicted in
Figure 3.
Pavement inspections were traditionally carried out using manual methods for a considerable amount of time using the traditional manner. The manual approach involves proposing to section the road into several inspection units along its length and width to accomplish a comprehensive assessment. The necessary tools required for conventional (manual methods) measurement include a ruler, a straight edge, a meter tape to measure the length of the ruts, and a thread to measure the area of the pothole [
24]. Additionally, the process of manual measurement can be highly laborious and time-consuming.
Figure 4 provides an example of the conventional method for measuring rutting depth.
3.2. Reconnaissance and Planning
The topography of the area and the pavement condition were studied [
21]. To guarantee that the ground control points were located in a manner that spanned all elevations and were scattered in a manner that assured they covered all sides of the study area, the appropriate position for the ground control points was chosen. It can be seen in
Figure 5 that the control points have been specified. We utilized elements that are easily discernible on the pavement surfaces, such as crack crossings, sharp edges, and stains, among other things. Therefore, to achieve GCPs that were of a high level of precision, the GCPs were monitored with the use of a Spectra Precision SP60 GNSS device [
5].
Table 1 displays the coordinates of several GCPs.
3.3. Data Collection
A UAV (DJI Mavic 3, L2D-20c camera, Hasselblad, Gothenburg, Sweden) was used to capture 263 aerial photographs during multiple flight missions over the designated test area, maintaining a consistent flight altitude of approximately 59 m. Data acquisition was conducted under optimal environmental conditions, including clear skies, low wind speeds, and favorable natural lighting during early morning hours. These conditions were deliberately selected to minimize image distortion, shadows, and glare, thereby enhancing the visual clarity and reliability of the captured data. To ensure high spatial accuracy, six ground control points (GCPs) were strategically distributed across the site and measured using a real-time kinematic (RTK) positioning system, providing precise geographic coordinates. The integration of GCPs facilitated accurate georeferencing, scale, and orientation alignment within the target coordinate system, which was critical for generating high-quality orthomosaics and 3D models for pavement condition assessment.
Figure 6 provides an example of the UAV imagery used in this study.
3.4. Data Processing
Agisoft Photoscan was used to process the images, which were obtained from UAVs in two phases. The first process was to obtain a 3D model without using GCPs. In the second phase, the 3D model and the orthophoto were reconstructed using GCPs with a ground resolution of 1.47 cm/pix (
Figure 7). Many features of Agisoft Photoscan are used to extract digital elevation models (DEMs) and dense point cloud data (coordinate-based data collection). The exterior surface of an item is commonly represented by these points in a 3D coordinate system using X, Y, and Z coordinates. A 3D point cloud was utilized to represent volumetric data and generate contour lines. Dense point cloud data generates high-accuracy results [
24].
Table 2 shows the RMSE of the coordinates of the control points in X (easting), Y (northing), and Z (altitude).
5. Discussion
The results of this study indicate that the proposed method—utilizing unmanned aerial vehicles (UAVs) combined with ground control points (GCPs)—provides a significant improvement over traditional pavement inspection techniques, particularly in terms of accuracy, operational efficiency, and safety. This enhancement is especially important in urban environments, where rapid assessments with minimal traffic disruption are essential. Unlike the manual method, which typically requires a full team (two individuals for measurement and two for traffic control), the UAV-based approach can be executed by a single trained operator. This significantly reduces labor requirements, minimizes safety risks for personnel, and accelerates the data collection process. The reduction in field personnel not only decreases operational costs but also lowers the exposure to roadside hazards, enhancing worker safety. UAVs can capture high-resolution images in a fraction of the time required by conventional methods, enabling more frequent and widespread monitoring of road infrastructure.
In the conventional method, a full team of three to four people is required—two individuals to take measurements and two others to manage and control the traffic around the inspection area to ensure safety during the measurement phase. Such coordination demands careful planning, traffic signage, and often requires temporary traffic control measures, which can inconvenience road users and extend project timelines. This method is not only time-consuming but also resource-intensive, requiring coordination among several people and the use of traffic management measures. It also limits the number of road segments that can be inspected within a given timeframe. In contrast, the proposed UAV-based method requires only one experienced individual to operate the UAV and collect the necessary data, making the process far more streamlined and flexible. Furthermore, UAV operations can be scheduled during off-peak hours or in difficult-to-access areas without needing extensive ground logistics. This results in a faster data collection phase, as UAVs can capture high-resolution images and measurements of the pavement surface in a fraction of the time that traditional methods take, thereby supporting timely maintenance planning and decision-making.
Furthermore, the UAV-based method enhances safety. Since data is collected from above, inspectors are not exposed to on-road hazards, which is especially important on high-traffic roads or in dangerous conditions. UAVs also allow for continuous monitoring without interrupting traffic, unlike conventional methods that require full or partial road closures. In terms of measurement quality, the UAV method achieves a high precision. For example, rut depth measurements in this study had an error margin of 3.54 mm, which is consistent with Tan and Li [
9], who reported an accuracy of 1 cm.
These findings align with previous studies by Feitosa et al. [
10] and Romero-Chambi et al. [
7], which confirmed the reliability of UAVs in detecting various pavement distresses such as cracks, potholes, and rutting. These studies also emphasized the time and cost efficiency of UAV-based approaches. Our results support these conclusions, as different types of pavement damage were successfully identified and measured with a high accuracy.
The findings of this study align with previous research, including the work of Romero-Chambi et al. [
7], highlighting the reliability of this method in accurately identifying and quantifying various surface distresses, such as cracks and depressions. The high level of measurement accuracy enables the development of advanced maintenance management systems based on precise data, which can lead to optimized resource allocation and improved strategic decision-making in pavement maintenance. To ensure the proper implementation of this method, it is crucial to provide adequate training for operators and to establish necessary coordination with relevant authorities. Ultimately, through a thorough analysis of imaging results, an accurate identification of distresses, and a clear understanding of the primary causes of pavement deterioration by experts, the findings of this research can serve as a foundation for expanding the application of drone technology in the intelligent and sustainable management of transportation infrastructure.
The detection and classification of pavement cracks, which was conducted with an accuracy of 1 cm in this study, further corroborates the work of Nappo et al. [
21], who also demonstrated that UAVs could effectively identify and categorize various types of pavement cracks, such as longitudinal, transverse, and crocodile cracks. The ability to detect these cracks with a high accuracy is crucial for proactive pavement management, as it allows for the early identification of areas that may require maintenance or repairs.
The results of this study show that the UAV-based method is highly effective in classifying cracks and can distinguish between different types, providing valuable information for road maintenance teams. The RMSE values for rut depth measurements (3.54 mm) and patch area measurements (4.44 cm2) in this study were found to be comparable to those reported in similar studies, which further supports the accuracy of the UAV-based method for pavement distress detection.
However, some slight discrepancies were observed in patch area measurements compared to the findings of Silva et al. [
13], where the RMSE for some patches in this study was slightly higher. These discrepancies may be attributed to differences in the UAV models used, the imaging resolution, or other factors such as environmental conditions during data collection. Nevertheless, the overall accuracy of the proposed method is still considered to be within an acceptable range and is sufficient for practical pavement inspection purposes.
Besides its technological and operational advantages, the UAV-based approach illustrated in this paper provides concrete environmental benefits. The inspection technique markedly decreases the fuel consumption, CO
2 emissions, and noise pollution by obviating the necessity for vehicle convoys, heavy machinery, and on-site personnel. These savings are particularly significant when inspections are conducted routinely or over extensive metropolitan networks. As evidenced in analogous studies by Feitosa et al. [
10] and Santos et al. [
16], the utilization of UAVs facilitates the advancement of low-carbon infrastructure monitoring systems. Aurangzeb et al. [
17] observed that drone-assisted inspection initiatives had realized emission reductions of up to 90% relative to conventional methods. This affirms the method’s function as both a technological breakthrough and a sustainable practice that corresponds with worldwide environmental objectives. Moreover, the UAV’s ability for non-intrusive surveillance guarantees little disturbance to ecosystems and urban traffic dynamics, enhancing its use as an instrument for sustainable pavement management [
18].
Beyond the immediate benefits in accuracy and operational efficiency, integrating UAV-based inspections into routine municipal asset management can lead to predictive maintenance planning. By continuously collecting standardized image data, cities can develop deterioration models that inform when and where maintenance should occur. This shift from reactive to proactive strategies may reduce lifecycle costs and improve road safety.
The results of this study clearly demonstrate that the integration of unmanned aerial vehicles (UAVs) with ground control points (GCPs) enables highly accurate assessment of pavement conditions. This combined approach not only enhances the measurement precision but also paves the way for substantial future improvements through the incorporation of advanced artificial intelligence (AI) and deep learning algorithms. By leveraging AI techniques, the system’s capability to automatically detect, classify, and diagnose various pavement distresses—such as cracks, potholes, and rutting—can be significantly enhanced. This advancement would facilitate more efficient, large-scale road monitoring and maintenance operations, reducing the reliance on manual inspections and enabling proactive infrastructure management. Consequently, the methodology developed in this study establishes a robust foundation for ongoing innovation and technological progress in the field of pavement inspection and maintenance.
Although this research was conducted on a relatively low-traffic urban road segment, the UAV-GCP methodology shows strong potential for applications in more complex environments characterized by higher traffic volumes and a denser urban infrastructure. An effective deployment in such settings would require careful coordination with municipal authorities and traffic management agencies to schedule data acquisition during periods of minimal traffic disruption and in compliance with local regulations. This institutional collaboration is essential to ensure both safety and operational efficiency. With proper planning and stakeholder engagement, the UAV-based inspection system can be successfully scaled and adapted to address the challenges posed by diverse urban contexts, including areas with significant obstructions, dynamic traffic patterns, and regulatory constraints.
A critical factor in achieving the high accuracy and reliability of UAV-based pavement inspections lies in the strategic selection and deployment of ground control points (GCPs), alongside the careful timing of image acquisition flights. The optimal placement of GCPs must account for site-specific environmental factors to maximize their visibility and minimize issues such as occlusions caused by shadows, glare, or surface reflectance, which can adversely affect the image quality and model accuracy. Additionally, conducting UAV flights under favorable lighting and weather conditions—such as clear skies, low wind speeds, and diffuse sunlight—is essential to reduce image distortion and improve data fidelity. Such meticulous operational planning and environmental consideration are indispensable for mitigating measurement biases, enhancing the robustness of the data collected, and ensuring high-fidelity outcomes that are suitable for practical pavement condition assessments and maintenance decision-making.