4 research outputs found

    Application of Machine Learning within Visual Content Production

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    We are living in an era where digital content is being produced at a dazzling pace. The heterogeneity of contents and contexts is so varied that a numerous amount of applications have been created to respond to people and market demands. The visual content production pipeline is the generalisation of the process that allows a content editor to create and evaluate their product, such as a video, an image, a 3D model, etc. Such data is then displayed on one or more devices such as TVs, PC monitors, virtual reality head-mounted displays, tablets, mobiles, or even smartwatches. Content creation can be simple as clicking a button to film a video and then share it into a social network, or complex as managing a dense user interface full of parameters by using keyboard and mouse to generate a realistic 3D model for a VR game. In this second example, such sophistication results in a steep learning curve for beginner-level users. In contrast, expert users regularly need to refine their skills via expensive lessons, time-consuming tutorials, or experience. Thus, user interaction plays an essential role in the diffusion of content creation software, primarily when it is targeted to untrained people. In particular, with the fast spread of virtual reality devices into the consumer market, new opportunities for designing reliable and intuitive interfaces have been created. Such new interactions need to take a step beyond the point and click interaction typical of the 2D desktop environment. The interactions need to be smart, intuitive and reliable, to interpret 3D gestures and therefore, more accurate algorithms are needed to recognise patterns. In recent years, machine learning and in particular deep learning have achieved outstanding results in many branches of computer science, such as computer graphics and human-computer interface, outperforming algorithms that were considered state of the art, however, there are only fleeting efforts to translate this into virtual reality. In this thesis, we seek to apply and take advantage of deep learning models to two different content production pipeline areas embracing the following subjects of interest: advanced methods for user interaction and visual quality assessment. First, we focus on 3D sketching to retrieve models from an extensive database of complex geometries and textures, while the user is immersed in a virtual environment. We explore both 2D and 3D strokes as tools for model retrieval in VR. Therefore, we implement a novel system for improving accuracy in searching for a 3D model. We contribute an efficient method to describe models through 3D sketch via an iterative descriptor generation, focusing both on accuracy and user experience. To evaluate it, we design a user study to compare different interactions for sketch generation. Second, we explore the combination of sketch input and vocal description to correct and fine-tune the search for 3D models in a database containing fine-grained variation. We analyse sketch and speech queries, identifying a way to incorporate both of them into our system's interaction loop. Third, in the context of the visual content production pipeline, we present a detailed study of visual metrics. We propose a novel method for detecting rendering-based artefacts in images. It exploits analogous deep learning algorithms used when extracting features from sketches

    Entornos multimedia de realidad aumentada en el campo del arte

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    La relación ente Ciencia y Arte ha mantenido a lo largo de la historia momentos de proximidad o distanciamiento, llegando a entenderse como dos culturas diferentes, pero también se han producido situaciones interdisciplinares de colaboración e intercambio que en nuestros días mantienen como nexo común la cultura digital y el uso del ordenador. Según Berenguer (2002) desde la aparición del ordenador, científicos y artistas están encontrando un espacio común de trabajo y entendimiento. Mediante el empleo de las nuevas tecnologías, la distancia que separa ambas disciplinas es cada vez más corta. En esta tesis, cuyo título es "Entornos Multimedia de Realidad Aumentada en el Campo del Arte", se presenta una investigación teórico-práctica de la tecnología de realidad aumentada aplicada al arte y campos afines, como el edutainment (educación + entretenimiento). La investigación se ha realizado en dos bloques: en el primer bloque se trata la tecnología desde distintos factores que se han considerado relevantes para su entendimiento y funcionamiento; en el segundo se presentan un total de seis ensayos que constituyen la parte práctica de esta tesis.Portalés Ricart, C. (2008). Entornos multimedia de realidad aumentada en el campo del arte [Tesis doctoral no publicada]. Universitat Politècnica de València. https://doi.org/10.4995/Thesis/10251/3402Palanci

    Towards an understanding of humanoid robots in eLC applications

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    Integration of Reciprocal Teaching-ICT Model To Improve Students’Mathematics Critical Thinking Ability

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    This research examines the effectiveness on how mathematics teachers have begun to integrate information and communication technology (ICT) with reciprocal teaching model to improve students’ mathematics critical thinking ability into seventh junior high school classroom practice. This study was experimental research with a quasi-experimental design. The samples of the study are 36 students for classroom experiments and 36 students for classroom control. The instruments employed in this study were pre-test and post-test. All the instruments are made in essays forms. The data were analyzed by using descriptive statistics. Based on the research findings, it was gotten that (1) the development of teaching instructional multimedia of the seven grade students of junior high school; (2) the improvement of students’ mathematics critical thinking ability in experimental class; (3) the aspect of attractiveness shows that the developed instructional multimedia was very interesting; and (4) reciprocal learning has good impact on students’ mathematics critical thinking ability
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