14 research outputs found

    The application of user log for online business environment using content-based Image retrieval system

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    Over the past few years, inter-query learning has gained much attention in the research and development of content-based image retrieval (CBIR) systems. This is largely due to the capability of inter-query approach to enable learning from the retrieval patterns of previous query sessions. However, much of the research works in this field have been focusing on analyzing image retrieval patterns stored in the database. This is not suitable for a dynamic environment such as the World Wide Web (WWW) where images are constantly added or removed. A better alternative is to use an image's visual features to capture the knowledge gained from the previous query sessions. Based on the previous work (Chung et al., 2006), the aim of this paper is to propose a framework of inter-query learning for the WWW-CBIR systems. Such framework can be extremely useful for those online companies whose core business involves providing multimedia content-based services and products to their customers

    Query-dependent metric learning for adaptive, content-based image browsing and retrieval

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    Adaptive image retrieval using a graph model for semantic feature integration

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    The variety of features available to represent multimedia data constitutes a rich pool of information. However, the plethora of data poses a challenge in terms of feature selection and integration for effective retrieval. Moreover, to further improve effectiveness, the retrieval model should ideally incorporate context-dependent feature representations to allow for retrieval on a higher semantic level. In this paper we present a retrieval model and learning framework for the purpose of interactive information retrieval. We describe how semantic relations between multimedia objects based on user interaction can be learnt and then integrated with visual and textual features into a unified framework. The framework models both feature similarities and semantic relations in a single graph. Querying in this model is implemented using the theory of random walks. In addition, we present ideas to implement short-term learning from relevance feedback. Systematic experimental results validate the effectiveness of the proposed approach for image retrieval. However, the model is not restricted to the image domain and could easily be employed for retrieving multimedia data (and even a combination of different domains, eg images, audio and text documents)

    A Survey on Face Recognition Techniques

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    Face detection is a computer technology that determines the locations and sizes of human faces in arbitrary (digital) images. It detects facial features and ignores anything else, such as buildings, trees and bodies. Face detection can be regarded as a specific case of object-class detection. In object-class detection, the task is to find the locations and sizes of all objects in an image that belong to a given class. Examples include upper torsos, pedestrians, and cars. Face detection can be regarded as a more general case of face localization. These days face detection is current research area. The face detection is normally done using ANN, CBIR, LDA and PCA. Keywords:- ANN, CBIR, LDA and PC

    HIGH DIMENSIONAL CONCLUSIVE STRATEGY TO SEARCH IN LARGE-SCALE DATA SPACE

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    Within the recent occasions, several techniques of multi-view hashing were suggested for ingenious similarity search. These techniques mostly rely on spectral, graph otherwise deep learning strategies to achieve data structure protecting encoding. However hashing technique purely along with other schemes is usually responsive to data noise and struggling with high computational difficulty. We recommend a manuscript without supervision multi-view hashing approach, called as Multi-view Alignment Hashing, which fuses several information sources and utilize discriminative low-dimensional embedding by way of nonnegative matrix factorization.  Non-negative matrix factorization is a well-liked technique within data mining tasks which seeks to discover a non-negative parts-based representation that gives better visual interpretation of factoring matrices for high-dimensional data

    Texture Based Image retrieval using Human interactive Genetic Algorithm

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    Content-based image retrieval has been keenly calculated in numerous fields. This provides more active management and retrieval of images than the keyword-based method. So the content based image retrieval has become one of the liveliest researches in the past few years. As earlier, we were using the text-based approach where it initiate very boring and hard task for solving the purpose of image retrieval. But the CBIR is the method where there are several methodologies are available and the task of image retrieval becomes well easier. In this, there are specific effective methods for CBIR are discussed and the relative study is made. However most of the proposed methods emphasize on finding the best representation for diverse image features. Here, the user-oriented mechanism for CBIR method based on an interactivegenetic algorithm (IGA) is proposed. Color attributes likethe mean value, the standard deviation, and the image bitmap of a color image are used as the features for retrieval. In addition, the entropy based on the gray level co-occurrence matrix and the edge histograms of an image are too considered as the texture features

    Effective Graph-Based Content--Based Image Retrieval Systems for Large-Scale and Small-Scale Image Databases

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    This dissertation proposes two novel manifold graph-based ranking systems for Content-Based Image Retrieval (CBIR). The two proposed systems exploit the synergism between relevance feedback-based transductive short-term learning and semantic feature-based long-term learning to improve retrieval performance. Proposed systems first apply the active learning mechanism to construct users\u27 relevance feedback log and extract high-level semantic features for each image. These systems then create manifold graphs by incorporating both the low-level visual similarity and the high-level semantic similarity to achieve more meaningful structures for the image space. Finally, asymmetric relevance vectors are created to propagate relevance scores of labeled images to unlabeled images via manifold graphs. The extensive experimental results demonstrate two proposed systems outperform the other state-of-the-art CBIR systems in the context of both correct and erroneous users\u27 feedback

    Semantic image retrieval using relevance feedback and transaction logs

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    Due to the recent improvements in digital photography and storage capacity, storing large amounts of images has been made possible, and efficient means to retrieve images matching a user’s query are needed. Content-based Image Retrieval (CBIR) systems automatically extract image contents based on image features, i.e. color, texture, and shape. Relevance feedback methods are applied to CBIR to integrate users’ perceptions and reduce the gap between high-level image semantics and low-level image features. The precision of a CBIR system in retrieving semantically rich (complex) images is improved in this dissertation work by making advancements in three areas of a CBIR system: input, process, and output. The input of the system includes a mechanism that provides the user with required tools to build and modify her query through feedbacks. Users behavioral in CBIR environments are studied, and a new feedback methodology is presented to efficiently capture users’ image perceptions. The process element includes image learning and retrieval algorithms. A Long-term image retrieval algorithm (LTL), which learns image semantics from prior search results available in the system’s transaction history, is developed using Factor Analysis. Another algorithm, a short-term learner (STL) that captures user’s image perceptions based on image features and user’s feedbacks in the on-going transaction, is developed based on Linear Discriminant Analysis. Then, a mechanism is introduced to integrate these two algorithms to one retrieval procedure. Finally, a retrieval strategy that includes learning and searching phases is defined for arranging images in the output of the system. The developed relevance feedback methodology proved to reduce the effect of human subjectivity in providing feedbacks for complex images. Retrieval algorithms were applied to images with different degrees of complexity. LTL is efficient in extracting the semantics of complex images that have a history in the system. STL is suitable for query and images that can be effectively represented by their image features. Therefore, the performance of the system in retrieving images with visual and conceptual complexities was improved when both algorithms were applied simultaneously. Finally, the strategy of retrieval phases demonstrated promising results when the query complexity increases

    Recuperação multimodal e interativa de informação orientada por diversidade

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    Orientador: Ricardo da Silva TorresTese (doutorado) - Universidade Estadual de Campinas, Instituto de ComputaçãoResumo: Os mĂ©todos de Recuperação da Informação, especialmente considerando-se dados multimĂ­dia, evoluĂ­ram para a integração de mĂșltiplas fontes de evidĂȘncia na anĂĄlise de relevĂąncia de itens em uma tarefa de busca. Neste contexto, para atenuar a distĂąncia semĂąntica entre as propriedades de baixo nĂ­vel extraĂ­das do conteĂșdo dos objetos digitais e os conceitos semĂąnticos de alto nĂ­vel (objetos, categorias, etc.) e tornar estes sistemas adaptativos Ă s diferentes necessidades dos usuĂĄrios, modelos interativos que consideram o usuĂĄrio mais prĂłximo do processo de recuperação tĂȘm sido propostos, permitindo a sua interação com o sistema, principalmente por meio da realimentação de relevĂąncia implĂ­cita ou explĂ­cita. Analogamente, a promoção de diversidade surgiu como uma alternativa para lidar com consultas ambĂ­guas ou incompletas. Adicionalmente, muitos trabalhos tĂȘm tratado a ideia de minimização do esforço requerido do usuĂĄrio em fornecer julgamentos de relevĂąncia, Ă  medida que mantĂ©m nĂ­veis aceitĂĄveis de eficĂĄcia. Esta tese aborda, propĂ”e e analisa experimentalmente mĂ©todos de recuperação da informação interativos e multimodais orientados por diversidade. Este trabalho aborda de forma abrangente a literatura acerca da recuperação interativa da informação e discute sobre os avanços recentes, os grandes desafios de pesquisa e oportunidades promissoras de trabalho. NĂłs propusemos e avaliamos dois mĂ©todos de aprimoramento do balanço entre relevĂąncia e diversidade, os quais integram mĂșltiplas informaçÔes de imagens, tais como: propriedades visuais, metadados textuais, informação geogrĂĄfica e descritores de credibilidade dos usuĂĄrios. Por sua vez, como integração de tĂ©cnicas de recuperação interativa e de promoção de diversidade, visando maximizar a cobertura de mĂșltiplas interpretaçÔes/aspectos de busca e acelerar a transferĂȘncia de informação entre o usuĂĄrio e o sistema, nĂłs propusemos e avaliamos um mĂ©todo multimodal de aprendizado para ranqueamento utilizando realimentação de relevĂąncia sobre resultados diversificados. Nossa anĂĄlise experimental mostra que o uso conjunto de mĂșltiplas fontes de informação teve impacto positivo nos algoritmos de balanceamento entre relevĂąncia e diversidade. Estes resultados sugerem que a integração de filtragem e re-ranqueamento multimodais Ă© eficaz para o aumento da relevĂąncia dos resultados e tambĂ©m como mecanismo de potencialização dos mĂ©todos de diversificação. AlĂ©m disso, com uma anĂĄlise experimental minuciosa, nĂłs investigamos vĂĄrias questĂ”es de pesquisa relacionadas Ă  possibilidade de aumento da diversidade dos resultados e a manutenção ou atĂ© mesmo melhoria da sua relevĂąncia em sessĂ”es interativas. Adicionalmente, nĂłs analisamos como o esforço em diversificar afeta os resultados gerais de uma sessĂŁo de busca e como diferentes abordagens de diversificação se comportam para diferentes modalidades de dados. Analisando a eficĂĄcia geral e tambĂ©m em cada iteração de realimentação de relevĂąncia, nĂłs mostramos que introduzir diversidade nos resultados pode prejudicar resultados iniciais, enquanto que aumenta significativamente a eficĂĄcia geral em uma sessĂŁo de busca, considerando-se nĂŁo apenas a relevĂąncia e diversidade geral, mas tambĂ©m o quĂŁo cedo o usuĂĄrio Ă© exposto ao mesmo montante de itens relevantes e nĂ­vel de diversidadeAbstract: Information retrieval methods, especially considering multimedia data, have evolved towards the integration of multiple sources of evidence in the analysis of the relevance of items considering a given user search task. In this context, for attenuating the semantic gap between low-level features extracted from the content of the digital objects and high-level semantic concepts (objects, categories, etc.) and making the systems adaptive to different user needs, interactive models have brought the user closer to the retrieval loop allowing user-system interaction mainly through implicit or explicit relevance feedback. Analogously, diversity promotion has emerged as an alternative for tackling ambiguous or underspecified queries. Additionally, several works have addressed the issue of minimizing the required user effort on providing relevance assessments while keeping an acceptable overall effectiveness. This thesis discusses, proposes, and experimentally analyzes multimodal and interactive diversity-oriented information retrieval methods. This work, comprehensively covers the interactive information retrieval literature and also discusses about recent advances, the great research challenges, and promising research opportunities. We have proposed and evaluated two relevance-diversity trade-off enhancement work-flows, which integrate multiple information from images, such as: visual features, textual metadata, geographic information, and user credibility descriptors. In turn, as an integration of interactive retrieval and diversity promotion techniques, for maximizing the coverage of multiple query interpretations/aspects and speeding up the information transfer between the user and the system, we have proposed and evaluated a multimodal learning-to-rank method trained with relevance feedback over diversified results. Our experimental analysis shows that the joint usage of multiple information sources positively impacted the relevance-diversity balancing algorithms. Our results also suggest that the integration of multimodal-relevance-based filtering and reranking was effective on improving result relevance and also boosted diversity promotion methods. Beyond it, with a thorough experimental analysis we have investigated several research questions related to the possibility of improving result diversity and keeping or even improving relevance in interactive search sessions. Moreover, we analyze how much the diversification effort affects overall search session results and how different diversification approaches behave for the different data modalities. By analyzing the overall and per feedback iteration effectiveness, we show that introducing diversity may harm initial results whereas it significantly enhances the overall session effectiveness not only considering the relevance and diversity, but also how early the user is exposed to the same amount of relevant items and diversityDoutoradoCiĂȘncia da ComputaçãoDoutor em CiĂȘncia da ComputaçãoP-4388/2010140977/2012-0CAPESCNP
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