4 research outputs found

    Image-Based Fracture Mechanics with Digital Image Correlation and Digital Volume Correlation

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    Analysis that requires human judgement can add bias which may, as a result, increase uncertainty. Accurate detection of a crack and segmentation of the crack geometry is beneficial to any fracture experiment. Studies of crack behaviour, such as the effect of closure, residual stress in fatigue or elastic-plastic fracture mechanics, require data on crack opening displacement. Furthermore, the crack path can give critical information of how the crack interacts with the microstructure and stress fields. Digital Image Correlation (DIC) and Digital Volume Correlation (DVC) have been widely accepted and routinely used to measure full-field displacements in many areas of solid mechanics, including fracture mechanics. However, current practise for the extraction of crack parameters from displacement fields usually requires manual methods and are quite onerous, particularly for large amounts of data. This thesis introduces the novel application of Phase Congruency-based Crack Detection (PC-CD) to automatically detect and characterise cracks from displacement fields. Phase congruency is a powerful mathematical tool that highlights a discontinuity more efficiently than gradient based methods. Phase congruency’s invariance to the magnitude of the discontinuity and its state-of-the-art de-noising method, make it ideal for the application to crack tip displacement fields. PC-CD’s accuracy is quantified and benchmarked using both theoretical and virtual displacement fields. The accuracy of PC-CD is evaluated and compared with conventional, manual computation methods such as Heaviside function fitting and gradient based methods. It is demonstrated how PC-CD can be coupled with a new method that is based on the conjoint use of displacement fields and finite element analysis to extract the strain energy release rate of cracks automatically. The PC-CD method is extended to volume displacement fields (VPC-CD) and semi-autonomously extracts crack surface, crack front and opening displacement through the thickness. As a proof of concept, PC-CD and VPC-CD are applied to a range of fracture experiments varying in material and fracture behaviour: two ductile and one quasi-brittle for surface displacement measurements; and two quasi-brittle and one ductile for volume measurements. Using the novel PC-CD and VPC-CD analyses, the crack geometry is obtained fully automatically and without any user judgement or intervention. The geometrical parameters extracted by PC-CD and VPC-CD are validated experimentally through other tools such as: optical microscope measurements, high resolution fractography and visual inspection

    LOOKING INTO ACTORS, OBJECTS AND THEIR INTERACTIONS FOR VIDEO UNDERSTANDING

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    Automatic video understanding is critical for enabling new applications in video surveillance, augmented reality, and beyond. Powered by deep networks that learn holistic representations of video clips, and large-scale annotated datasets, modern systems are capable of accurately recognizing hundreds of human activity classes. However, their performance significantly degrades as the number of actors in the scene or the complexity of the activities increases. Therefore, most of the research thus far has focused on videos that are short and/or contain a few activities performed only by adults. Furthermore, most current systems require expensive, spatio-temporal annotations for training. These limitations prevent the deployment of such systems in real-life applications, such as detecting activities of people and vehicles in an extended surveillance videos. To address these limitations, this thesis focuses on developing data-driven, compositional, region-based video understanding models motivated by the observation that actors, objects and their spatio-temporal interactions are the building blocks of activities and the main content of video descriptions provided by humans. This thesis makes three main contributions. First, we propose a novel Graph Neural Network for representation learning on heterogeneous graphs that encode spatio-temporal interactions between actor and object regions in videos. This model can learn context-aware representations for detected actors and objects, which we leverage for detecting complex activities. Second, we propose an attention-based deep conditional generative model of sentences, whose latent variables correspond to alignments between words in textual descriptions of videos and object regions. Building upon the framework of Conditional Variational Autoencoders, we train this model using only textual descriptions without bounding box annotations, and leverage its latent variables for localizing the actors and objects that are mentioned in generated or ground-truth descriptions of videos. Finally, we propose an actor-centric framework for real-time activity detection in videos that are extended both in space and time. Our framework leverages object detections and tracking to generate actor-centric tubelets, capturing all relevant spatio-temporal context for a single actor, and detects activities per tubelet based on contextual region embeddings. The models described have demonstrably improved the ability to temporally detect activities, as well as ground words in visual inputs

    Tracing back the source of contamination

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    From the time a contaminant is detected in an observation well, the question of where and when the contaminant was introduced in the aquifer needs an answer. Many techniques have been proposed to answer this question, but virtually all of them assume that the aquifer and its dynamics are perfectly known. This work discusses a new approach for the simultaneous identification of the contaminant source location and the spatial variability of hydraulic conductivity in an aquifer which has been validated on synthetic and laboratory experiments and which is in the process of being validated on a real aquifer
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