9 research outputs found

    New applications of Spectral Edge image fusion

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    In this paper, we present new applications of the Spectral Edge image fusion method. The Spectral Edge image fusion algorithm creates a result which combines details from any number of multispectral input images with natural color information from a visible spectrum image. Spectral Edge image fusion is a derivative–based technique, which creates an output fused image with gradients which are an ideal combination of those of the multispectral input images and the input visible color image. This produces both maximum detail and natural colors. We present two new applications of Spectral Edge image fusion. Firstly, we fuse RGB–NIR information from a sensor with a modiïŹed Bayer pattern, which captures visible and near–infrared image information on a single CCD. We also present an example of RGB–thermal image fusion, using a thermal camera attached to a smartphone, which captures both visible and low–resolution thermal images. These new results may be useful for computational photography and surveillance applications. © (2016) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only

    Crowd-sourced data and its applications for new algorithms in photographic imaging

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    This thesis comprises two main themes. The first of these is concerned primarily with the validity and utility of data acquired from web-based psychophysical experiments. In recent years web-based experiments, and the crowd-sourced data they can deliver, have been rising in popularity among the research community for several key reasons – primarily ease of administration and easy access to a large population of diverse participants. However, the level of control with which traditional experiments are performed, and the severe lack of control we have over web-based alternatives may lead us to believe that these benefits come at the cost of reliable data. Indeed, the results reported early in this thesis support this assumption. However, we proceed to show that it is entirely possible to crowd-source data that is comparable with lab-based results. The second theme of the thesis explores the possibilities presented by the use of crowd-sourced data, taking a popular colour naming experiment as an example. After using the crowd-sourced data to construct a model for computational colour naming, we consider the value of colour names as image descriptors, with particular relevance to illuminant estimation and object indexing. We discover that colour names represent a particularly useful quantisation of colour space, allowing us to construct compact image descriptors for object indexing. We show that these descriptors are somewhat tolerant to errors in illuminant estimation and that their perceptual relevance offers even further utility. We go on to develop a novel algorithm which delivers perceptually-relevant, illumination-invariant image descriptors based on colour names

    ModÚles de fusion et diffusion par équations aux dérivées partielles (application à la sismique azimutale)

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    Ce mémoire porte sur le développement de nouvelles méthodes de fusion d images à partir d un formalisme à base d Equations aux Dérivées Partielles (EDP). Les deux premiers chapitres bibliographiques portent sur les 2 domaines au centre de notre problématique : la fusion et les EDP. Le Chapitre 3 est consacré à la présentation progressive de notre modÚle EDP de fusion constitué par un terme de fusion (diffusion inverse isotrope) et un terme de régularisation. De plus, un des attraits de l approche EDP est de pouvoir traiter avec le formalisme des données bruitées. L association d un terme de diffusion dépendant du type de données à traiter est donc abordée. Le chapitre 4 est consacré à l application des modÚles de fusion-diffusion aux données sismiques. Pour répondre aux besoins de filtrage de ces données sismiques, nous proposons deux méthodes originales de diffusion 3D. Nous présenterons dans ce mémoire l approche de fusion 3D intégrant une de ces méthodes nommée SFPD (Seismic Fault Preserving Diffusion).This thesis focuses on developing new methods for image fusion based on Partial Differential Equations (PDE). The starting point of the proposed fusion approach is the enhancement process contained in most classical diffusion models. The aim of enhancing contours is similar to one of the purpose of the fusion: the relevant information (equivalent to the contours) must be found in the output image. In general, the contour enhancement uses an inverse diffusion equation. In our model of fusion, the evolution of each input image is led by such equation. This single equation must necessarily be accompanied by a global information detector useful to select the signal to be injected. In addition, an inverse diffusion equation, like any Gaussian deconvolution, raises problems of stability and regularization of the solution. To resolve these problems, a regularization term is integrated into the model. The general model of fusion is finally similar to an evolving cooperative system, where the information contained in each image starts moving towards relevant information, leading to a convergent process. The essential interest of PDE approach is to deal with noisy data by combining in a natural way two processes: fusion and diffusion. The fusion-diffusion proposed model is easy to adapt to different types of data by tuning the PDE. In order to adapt the fusion-diffusion model to a specific application, I propose 2 diffusion models: Seismic fault preserving diffusion and 3D directional diffusion . The aim is to denoise 3D seismic data. These models are integrated into the fusion-diffusion approach. One of them is successfully transferred to the industrial partner: french oil company Total. The efficiency of our models (fusion and fusion-diffusion) is proven through an experimental plan in both noisy and noisy-free data.BORDEAUX1-Bib.electronique (335229901) / SudocSudocFranceF
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