OAR@UM Community:
/library/oar/handle/123456789/11478
2026-05-29T23:16:11ZNon-commutative probability : from classical to quantum probability
/library/oar/handle/123456789/145690
Title: Non-commutative probability : from classical to quantum probability
Abstract: In classical probability theory, it is implicitly assumed that random variables
commute. However, this assumption does not necessarily hold in all mathemat
ical frameworks, such as those involving matrices. In this thesis, we will explore
quantum probability, a non-commutative extension of classical probability. The
main aim of this thesis shall be to examine how key concepts from classical
probability can be generalized in the quantum setting.
Description: M.Sc.(Melit.)2025-01-01T00:00:00ZInnovative methods for detecting sea turtle nests : a combination of UAV photogrammetry, GPR, and artificial intelligence for non-invasive monitoring and conservation
/library/oar/handle/123456789/145381
Title: Innovative methods for detecting sea turtle nests : a combination of UAV photogrammetry, GPR, and artificial intelligence for non-invasive monitoring and conservation
Abstract: Sea turtle nesting represents one of the most vulnerable stages in their life cycle; therefore,
protecting nesting sites is essential for the long-term survival of their populations. Traditional nest
detection methods are often invasive and may disturb nesting females. This study introduces a non
invasive approach for detecting and monitoring sea turtle nests through the combined use of
advanced technologies. Specifically, Ground Penetrating Radar (GPR) and Artificial Intelligence
(AI) are employed to automatically identify turtle tracks and assist in locating potential nesting
sites.
As part of this study, fieldwork was conducted at Golden Bay, Malta, where a simulated nest of
loggerhead turtle (Caretta caretta) was put together to evaluate how effectively and accurately
GPR can find an underground chamber containing eggs. To confirm the radar data, a 3D LiDAR
model was made of the internal structure of the simulated nest, thus providing a reference dataset
for the interpretation of radargrams. Meanwhile, an AI algorithm was instructed to automatically
recognize turtle tracks from beach photos, thus facilitating the identification of potential nesting
areas.
The integrative approach of these techniques demonstrates the potential of non-invasive
technologies to enhance the efficiency of sea turtle nest detection and conservation. The findings
contribute to the development of modern conservation strategies, particularly within small
Mediterranean rookeries such as Malta, where nesting events are rare and spatially constrained.
Description: M.Sc.(Melit.)2026-01-01T00:00:00ZHigh–resolution 3D reconstruction of sea caves in Malta through underwater photogrammetry techniques
/library/oar/handle/123456789/145380
Title: High–resolution 3D reconstruction of sea caves in Malta through underwater photogrammetry techniques
Abstract: This thesis aims to develop a high-resolution, three-dimensional photogrammetric
model of a selected sea cave in the Maltese Islands, this will allow for the monitoring of
geomorphic change and the rate of coastal erosion. The resulting model will provide a
spatially accurate and visually detailed baseline for scientific analysis of coastal
geomorphology and long-term monitoring of erosional processes with data integrated
from aerial, terrestrial, and underwater sources. This model will combine data sets from
terrestrial, submerged and aerial views of the cave, something that at the time of writing
has yet to be done.
Data collection was accomplished via the use of two GoPro 7 Black editions for the
photogrammetric model and an iPhone 15 for a LiDAR model of the terrestrial
component of the cave, used by hand as a team member walked the accessible regions
of the cave. A GoPro 13 black edition was carried by a second team member whilst
snorkelling in grid patterns at the surface of the submerged portion. Finally, a DJI Mavic
3 multispectral drone was used for the aerial components of the site, flown from a
promontory above the cave site itself.
The data collected was processed through Agisoft Metashape Professional v2.2.1
(Agisoft LLC, St Petersburg, Russia) with a model being created for each component of
the cave. The four models once processed were integrated to form one model with
scaling accuracy confirmed by the LiDAR model. The level of accuracy in the model
allowed for specific measurements to be taken such as width or height, these
measurements could allow for the calculation of the mass of rock likely to fall or give
bathymetric data on the current submerged section.
The combination of terrestrial, underwater, UAV, and LiDAR photogrammetry proved
to be a robust approach for capturing both the external and internal morphology of the
cave. Each method contributed complementary datasets: UAV photogrammetry
effectively mapped the promontory and entrance geometry, while underwater and
terrestrial images documented the cave’s internal surfaces in high detail. The integration
of LiDAR scanning from the iPhone 15 enhanced the scaling accuracy of the final
model, compensating for the potential geometric distortion associated with freehand
image capture. This multi-platform approach aligns with recent studies that advocate for
the combination of close-range photogrammetry and LiDAR to improve the geometric
precision of complex natural structures (Colica et al., 2021; Furlani et al., 2023).
Description: M.Sc.(Melit.)2026-01-01T00:00:00ZCoastal glow : gauging light in Maltese coastal areas whilst exploring the impact on turtle nesting preferences
/library/oar/handle/123456789/145379
Title: Coastal glow : gauging light in Maltese coastal areas whilst exploring the impact on turtle nesting preferences
Abstract: Artificial Light at Night (ALAN) is an increasingly significant anthropogenic pressure
affecting coastal and marine ecosystems worldwide. Species that rely on natural darkness
for key biological processes, such as the Loggerhead turtle (Caretta caretta), are
particularly vulnerable. Despite Malta being among the most light-polluted countries
globally, and albeit recent increases in turtle nesting activity on its beaches, the influence
of ALAN on local nesting-site selection has not yet been systematically studied. This
dissertation examines the extent of ALAN along key Maltese nesting beaches and evaluates
how light intensity interacts with physical beach characteristics to influence nesting
suitability.
Using data collected by Nature Trust Malta (NTM), combined with satellite-derived
radiance measurements from the VIIRS Day-Night Band, this study assesses five primary
nesting beaches: Gnejna, Golden Bay, Għajn Tuffieħa (Riviera), Għadira, and Ramla.
Environmental variables examined include beach elevation profiles, sand-grain texture,
vegetation proximity, lunar phase, cloud cover, and long-term changes in beach depth.
Radiance data from 2012–2025 were analysed to determine spatial and temporal trends in
coastal illumination.
Results show clear variation in beach quality and ALAN levels. Beaches with lower
radiance, gradual slopes, and suitable substrate—particularly Ramla—correspond with
successful nesting attempts. Conversely, beaches exposed to high artificial illumination,
especially parts of Għadira, show reduced suitability and fewer nesting events. Long-term
radiance trends indicate increasing light pollution across several sites, consistent with
other findings in other countries. These findings are not entirely conclusive, as they require
further studies in order to establish whether nesting site selection is effected by the physical
beach properties, ALAN, or whether it is the combination of the physical characteristics
which directly alter ALAN levels which have the greatest impact.
The study highlights the urgency of implementing improved lighting management,
enforcing coastal protection guidelines, and adopting ALAN-reduction measures in
sensitive habitats to help ensure the long-term viability of sea turtle populations in Maltese
waters.
Description: M.Sc.(Melit.)2026-01-01T00:00:00Z