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Littérature scientifique sur le sujet « Elaboraz. immagini »
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Articles de revues sur le sujet "Elaboraz. immagini"
Secco, Silvano. « Il corpo come luogo di testimonianza del passato ». RIVISTA SPERIMENTALE DI FRENIATRIA, no 1 (avril 2021) : 141–66. http://dx.doi.org/10.3280/rsf2021-001008.
Texte intégralSchlesener, Anita Helena. « Educação e Filosofia : uma leitura a partir de Freud e Benjamin ». EDUCAÇÃO E FILOSOFIA 33, no 69 (7 janvier 2021) : 1467–99. http://dx.doi.org/10.14393/revedfil.v33n69a2019-50448.
Texte intégralRenzoni, Cristina. « Il piano implicito : il territorio nazionale nella programmazione economica italiana 1946-'73 ». STORIA URBANA, no 126 (septembre 2010) : 139–68. http://dx.doi.org/10.3280/su2010-126007.
Texte intégralD'Angelo, Lorenzo, et Pietro Zanirato. « Come una cittŕ si ricorda e immagina il suo futuro ». COSTRUZIONI PSICOANALITICHE, no 22 (décembre 2011) : 133–42. http://dx.doi.org/10.3280/cost2011-022011.
Texte intégralBrinchi, Marina. « La ricerca di senso nella propria storia. Il vangelo secondo Matteo di Pier Paolo Pasolini (Italia, 1964) ». PSICOBIETTIVO, no 3 (février 2013) : 133–42. http://dx.doi.org/10.3280/psob2012-003011.
Texte intégraldu Boulay, E. P. G. H., B. Field, B. A. Teather, D. Teather et D. Plummer. « Estrazioni dalla letteratura pubblicata delle acquisizioni conoscitive riguardanti la tomografia a risonanza magnetica ». Rivista di Neuroradiologia 5, no 4 (novembre 1992) : 473–82. http://dx.doi.org/10.1177/197140099200500411.
Texte intégralTronina, Antoni. « Władza Boga nad światem a ład moralny według Księgi Hioba ». Verbum Vitae 14 (14 décembre 2008) : 57–70. http://dx.doi.org/10.31743/vv.1483.
Texte intégralMacaluso, Mercurio Albino. « L'uso della concentrazione nel lavoro sui sogni in psicoterapia della Gestalt ». QUADERNI DI GESTALT, no 1 (octobre 2011) : 35–44. http://dx.doi.org/10.3280/gest2011-001004.
Texte intégralBarbalato, Beatrice. « La teatralizzazione della memoria. » Mnemosyne, no 2 (11 octobre 2018) : 14. http://dx.doi.org/10.14428/mnemosyne.v0i2.11983.
Texte intégralFloris, R., A. Bozzao, M. Mulas, A. Apruzzese, C. Salvatore et G. Simonetti. « Il ruolo dell'Angio TC spirale nella valutazione diagnostica della biforcazione carotidea ». Rivista di Neuroradiologia 10, no 2_suppl (octobre 1997) : 105. http://dx.doi.org/10.1177/19714009970100s240.
Texte intégralThèses sur le sujet "Elaboraz. immagini"
BUZZELLI, MARCO. « Automatic Description and Annotation of Complex Scenes ». Doctoral thesis, Università degli Studi di Milano-Bicocca, 2019. http://hdl.handle.net/10281/241287.
Texte intégralAutomatically describing digital images consists in extracting information that meaningfully represents the depicted elements and their attributes. The specific concept of "meaningful" can be determined by the final application: in assistance to visually impaired people, for example, the final user might want to recognize familiar elements such as landmarks and logos. In the context of driver support for smart cars, it could be useful to recognize other vehicles and pedestrians, and to tell their distance from the car itself. A general pipeline for the envisioned scenarios involves three steps: object proposal, classification, and attributes extraction. In this thesis, several methods have been studied and developed for each of these steps, and subsequently applied to specific domains with the intent of comparing the produced solutions with existing works. Object proposal: one or many subregions containing elements of potential interest are extracted from the input image. In this thesis, single-object proposal is achieved using a neural architecture that is optimized in a novel way, combining genetic programming for the structure optimization with back-propagation for parameters tuning. Crossing the gap between object proposal and classification, semantic segmentation is then addressed with the definition of an original neural architecture that pays particular attention to computational efficiency for high-throughput scenarios. Classification: the subregions generated by the object proposal phase are classified into visual classes. Logo recognition is reported as a first case study. A new dataset has been collected, extending tenfolds the existing standard. Its combination with synthetic forms of data augmentation allows to reach state of the art performance. Vegetables and fruits recognition is then chosen as a representative example for fine-grained visual classification problems. The task is addressed by preprocessing images with object proposal algorithms, and by exploiting the hierarchical structure of the depicted classes. Attributes extraction: some subregions, identified as belonging to specific classes, are being associated with extra information. For the task of illuminant estimation, an original learning strategy is proposed, that completely avoids the need for explicitly-annotated illuminant information, relying instead on alternatively-available object-class annotations. Distance estimation is reported as a final case study. An alternative data representation is proposed, which is independent of any specific acquisition device, allowing the training of richer models for distance estimation. The role of data and its representation emerges as a common theme throughout the whole thesis. In particular, the following work describes the path from relying on existing manual annotations, to gradually reducing this dependency through alternative representations and learning strategies.
ZINI, SIMONE. « Image Enhancement and Restoration using Machine Learning Techniques ». Doctoral thesis, Università degli Studi di Milano-Bicocca, 2022. http://hdl.handle.net/10281/378899.
Texte intégralDigital cameras record, manipulate, and store information electronically through sensors and built-in computers, which makes photography more available to final users which do not anymore need to rely on the use of chemicals and knowledge of mechanical procedures to develop their pictures. Different types of degradation and artifacts can affect images acquired using digital cameras, decreasing the perceptual fidelity of images and making harder many image processing and analysis tasks that can be performed on the collected images. Three elements can be identified as possible sources of artifacts in an image: the scene content, the hardware limitations and flaws, and finally the operations performed by the digital camera processing pipeline itself, from acquisition to compression and storing. Some artifacts are not directly treated in the typical camera processing pipeline, such as the presence of haze or rain that can reduce visibility of the scene in the depicted images. These artifacts require the design of ad hoc methods that are usually applied as post-processing on the acquired images. Other types of artifacts are related to the imaging process and to the image processing pipeline implemented on board of digital cameras. These include sensor noise, undesirable color cast, poor contrast and compression artifacts. The objective of this thesis is the identification and design of new and more robust modules for image processing and restoration that can improve the quality of the acquired images, in particular in critical scenarios such as adverse weather conditions, poor light in the scene etc… . The artifacts identified are divided into two main groups: “in camera-generated artifacts" and “external artifacts and problems". In the first group it has been identified and addressed four main issues: sensor camera noise removal, automatic white balancing, automatic contrast enhancement and compression artifacts removal. The design process of the proposed solutions has considered efficiency aspects, due to the possibility of directly integrating them in future camera pipelines. The second group of artifacts are related to the presence of elements in the scene which may cause a degradation in terms of visual fidelity and/or usability of the images. In particular the focus is on artifacts induced by the presence of rain in the scene. The thesis, after a brief review of the digital camera processing pipeline, analyzes the different types of artifacts that can affect image quality, and describes the design of the proposed solutions. All the proposed approaches are based on machine learning techniques, such as Convolutional Neural Networks and Bayesian optimization procedure, and are experimentally validated on standard images datasets. The overall contributions of this thesis can be summarized in three points: integration of classical imaging approaches with machine learning optimization techniques, design of novel deep learning architectures and approaches and analysis and application of deep learning image processing algorithms in other computer vision tasks.
Cantalù, Nicola. « Uso di immagini fotogrammetriche storiche per la produzione di elaborati cartografici in Antartide ». Bachelor's thesis, Alma Mater Studiorum - Università di Bologna, 2016. http://amslaurea.unibo.it/10397/.
Texte intégralLivres sur le sujet "Elaboraz. immagini"
Neri, E. Produrre ed elaborare immagini diagnostiche. Milano : Springer-Verlag Italia, 2008.
Trouver le texte intégralProdurre ed elaborare immagini diagnostiche. Milano : Springer Milan, 2008. http://dx.doi.org/10.1007/978-88-470-1064-2.
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