1. Introduction
Unmanned aerial vehicles (UAVs) have become widely used platforms for visual inspection, environmental monitoring, infrastructure assessment, agricultural observation, search and rescue, wildlife monitoring, and remote sensing applications. Their ability to collect data from elevated positions, difficult-to-access locations, and hazardous environments makes them particularly useful for rapid field assessment. In addition to conventional RGB imaging, thermal imaging provides information that cannot be obtained from visible-light cameras alone, including surface temperature distribution, heat losses, thermal anomalies, warm objects, and human or animal presence under low-light or nighttime conditions.
Thermal UAV systems have been increasingly applied in wildlife monitoring, search and rescue, and environmental observation. Thermal infrared UAV data have been used for spatially explicit wildlife occupancy modelling [
1], while drone-based thermal tracking has been investigated for search and rescue missions [
2]. Thermal drones have also been applied for monitoring terrestrial mammals [
3], improving wildlife detection through optimized flight-path design [
4], and evaluating the influence of flight parameters on primate detection in tropical forests [
5]. These studies show that thermal UAV performance depends not only on the thermal sensor, but also on target size, flight altitude, acquisition geometry, environmental contrast, and mission-planning strategy.
The operational limitations of thermal drones have also been highlighted in search and rescue and field-monitoring scenarios. Burke et al. reported that effective thermal drone use in marine and coastal search and rescue is constrained by target detectability, background conditions, mission geometry, and environmental factors [
6]. Similar practical dependencies have been reported for nocturnal wildlife surveys, where sensor preparation, pre-programming, and operating conditions can influence detection performance [
7]. These findings are relevant because they show that thermal UAV systems should be evaluated as complete operational workflows rather than as isolated sensor units.
Thermal UAV imaging is also widely used in technical, agricultural, and environmental inspection tasks. UAV-based thermal photogrammetry has been applied for agronomic information extraction using MATLAB-based processing workflows [
8]. Thermal infrared cameras mounted on drones have been used for peat-fire detection and geolocation [
9], urban surface heat monitoring [
10], landfill monitoring [
11], and mining exploration using UAVs, low-cost thermal cameras, and GIS tools [
12]. UAV-based thermal imaging has also been used for agricultural object detection, such as stone detection on agricultural land [
13], as well as for crop productivity and water-use assessment when combined with hyperspectral sensing [
14]. These studies demonstrate the broad applicability of aerial thermal sensing, but they also show that reliable results depend strongly on flight conditions, data quality, processing workflow, and target-to-background thermal contrast.
In building and technical inspection, drone-based thermal approaches have been reviewed as promising tools for integrated building-envelope assessment [
15], while UAV-mounted thermal cameras have been used for automatic detection of deteriorated photovoltaic modules [
16]. In these applications, professional workflows typically rely on directly mounted thermal cameras, stabilized platforms, radiometric image acquisition, synchronized telemetry, flight planning, and post-processing tools. As a result, they can provide high-quality thermal data with known spatial, radiometric, and operational characteristics.
Recent developments in drone imaging and sensor-based situational awareness also show increasing interest in multimodal UAV sensing, real-time detection, and visible–thermal data integration [
17,
18,
19,
20]. These approaches are typically based on more advanced hardware and processing pipelines than the low-cost system investigated in the present work, but they provide useful context for understanding the role of sensor fusion, flight planning, coverage, and image-processing methods in UAV-based thermal applications.
Despite these advantages, professional UAV thermal platforms remain expensive and may be inaccessible for educational demonstrations, preliminary feasibility studies, rapid prototyping, and low-resource field screening. This creates practical interest in alternative low-cost configurations that can provide basic thermal information without attempting to replace professional radiometric UAV systems. Smartphone-compatible thermal cameras are one possible solution. These compact infrared modules can be connected to lightweight smartphones and can display or record thermal video through mobile applications. However, integrating such a system with a lightweight consumer UAV is not straightforward.
The main challenge is that lightweight consumer drones have limited payload capacity. Adding even a small smartphone–thermal camera module may significantly affect total mass, center of gravity, motor loading, battery endurance, flight stability, and safety margins. Furthermore, if the thermal information is displayed on a smartphone screen and then recorded indirectly by the onboard RGB camera of the UAV, the resulting data quality depends not only on the thermal camera but also on display brightness, ambient illumination, camera focus, display size in the frame, screen reflections, and suspended-load motion.
Therefore, such a configuration should not be considered equivalent to a professional UAV-mounted thermal camera. Instead, it should be treated as an indirect UAV thermal sensing workflow, where the primary thermal stream is generated by the smartphone-connected infrared camera, while the UAV RGB camera records the smartphone-displayed thermal information during flight. This creates a low-cost but technically limited approach that requires experimental validation.
More generally, experimental engineering studies in combustion analysis, machine vision, braking systems, thermo-structural analysis, and thermoelectric devices show that applied technical systems require careful evaluation of hardware configuration, operating conditions, sensor outputs, and model optimization [
21,
22,
23,
24,
25]. Although these works address different engineering domains, they support the broader methodological view that experimental systems should be assessed together with their operational limits, measurement constraints, and optimization potential.
The present study evaluates a low-cost indirect UAV thermal sensing system based on a DJI Mini 4K consumer drone, a Servo King900 lightweight smartphone, and a UTi260M smartphone-connected infrared thermal camera. The smartphone–thermal camera module was suspended below the UAV using an ultralight cord-based mount, while the onboard RGB camera recorded the displayed thermal video stream during flight. Additional thermal inspections of the UAV motors were performed using a UTi260T handheld thermal camera in order to assess the influence of payload operation on propulsion system thermal loading.
The objective of this study is not to develop a professional radiometric UAV thermal imaging platform. Instead, the aim is to experimentally determine whether a minimal-cost UAV–smartphone–thermal camera configuration can provide usable thermal screening information under controlled low-altitude conditions and to identify its operational limits. The investigation focuses on payload mass, suspended-load stability, flight endurance, motor thermal loading, display readability, illumination conditions, operating height, warning occurrence, and the practical usability of the indirectly recorded thermal stream.
The main contributions of this study are as follows:
A low-cost indirect UAV thermal sensing workflow is proposed using a consumer drone, a lightweight smartphone, and a smartphone-connected LWIR thermal camera.
The payload mass and relative loading of the UAV platform are experimentally quantified.
The influence of the suspended smartphone–thermal camera module on flight endurance, stability, motor loading, and operational warnings is evaluated.
The readability of the smartphone-displayed thermal stream is compared under daylight and nighttime operating conditions.
Direct thermal frames and UAV-recorded display frames are used to assess the practical usability and limitations of the proposed workflow.
The operational boundaries of the system are defined, including the effects of display glare, camera focus, payload oscillation, limited thermal resolution, motor thermal loading, and non-radiometric indirect acquisition.
The novelty of the work is not in proposing a professional UAV thermal imaging system, but in experimentally characterizing a low-cost, indirect, smartphone-based UAV thermal sensing configuration and its practical constraints. This includes the trade-off between payload mass, display readability, camera–display distance, suspended-load stability, motor thermal loading, flight endurance, and preliminary thermal target visibility.