794 research outputs found

    A Search Based Face Annotation (SBFA) Algorithm for Annotating Frail Labeled Images

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    Data mining is the method of extracting valuable data from an over-sized information supply. Currently a day’s web has gained additional attention of users with its wealthy interfaces and surplus quantity of knowledge on the market on web. This has earned plenty of user’s interest in extracting plenty of helpful data but it’s still restricted with a number of the resources extraction like frail labeled facial pictures. This paper mainly investigates a novel framework of search-based face annotation by mining frail tagged facial pictures that are freely available on the web. One major limitation is how effectively we can perform annotation by exploiting the list of most similar facial pictures and their weak labels that are usually vague and incomplete. To resolve this drawback, we have a tendency to propose a unsupervised label refinement (ULR) approach for refining the labels of web facial pictures. A clustering-based approximation algorithmic rule which might improve the quantifiable significantly is implemented. In this paper we've enforced a replacement search supported image search i.e. Image is taken as input instead of text keyword and also the output is additionally retrieved within the sorted list of image, If the input image is matched with any of the of pictures in image sound unit. Also ranking is given to images based on user views

    TAG ME: An Accurate Name Tagging System for Web Facial Images using Search-Based Face Annotation

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    Now a day the demand of social media is increases rapidly and most of the part of social media is made up of multimedia content cognate as images, audio, video. Hence for taking this as a motivation we have proffer a framework for Name tagging or labeling For Web Facial Images, which are easily obtainable on the internet. TAG ME system does that name tagging by utilizing search-based face annotation (SBFA). Here we are going to select an image from a database which are weakly labeled on the internet and the "TAG ME" assign a correct and accurate names or tags to that facial image, for doing this a few challenges have to be faced the One exigent difficulty for search-based face annotation strategy is how to effectually conduct annotation by utilizing the list of nearly all identical face images and its labels which is weak that are habitually rowdy and deficient. In TAGME we have resolve this problem by utilizing an effectual semi supervised label refinement (SSLR) method for purify the labels of web and nonweb facial images with the help of machine learning techniques. Secondly we used convex optimization techniques to resolve learning problem and used effectual optimization algorithms to resolve the learning task which is based on the large scale integration productively. For additionally quicken the given system, finally TAGME system proposed clustering-based approximation algorithm which boost the scalability considerably

    An Effective Technique for Removal of Facial Dupilcation by SBFA

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    Search based face annotation (SBFA) is an effective technique to annotate the weakly labeled facial images that are freely available on World Wide Web. The main objective of search based face annotation is to assign correct name labels to given query facial image. One difficult drawback for search based face annotation theme is how to effectively perform annotation by exploiting the list of most similar facial pictures and their weak labels that square measure typically droning and incomplete. To tackle this drawback, we tend to propose a good unattended label refinement (URL) approach for purification the labels of web facial pictures exploitation machine learning technique. We tend to formulate the educational drawback as a gibbose improvement and develop effective improvement algorithms to resolve the large scale learning task expeditiously. To additional speed up the projected theme, we also proposed clustering based approximation algorithmic program which may improve quantify ability significantly. We have conducted an in depth set of empirical studies on a large scale net facial image test bed, within which encouraging results showed that the projected URL algorithms will considerably boost the performance of the promising SBFA theme. In future work we will use HAAR algorithm. HAAR is feature based method for face detection. HAAR features, integral images, recognized detection of features improve face detection in terms of speed and accuracy. DOI: 10.17762/ijritcc2321-8169.150517

    FANS: Face annotation by searching large-scale web facial images

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    Ministry of Education, Singapore under its Academic Research Funding Tier

    Retrieval-based face annotation by weak label regularized local coordinate coding

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    Ministry of Education, Singapore under its Academic Research Funding Tier

    Deep Feature Representation and Similarity Matrix based Noise Label Refinement Method for Efficient Face Annotation

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    Face annotation is a naming procedure that assigns the correct name to a person emerging from an image. Faces that are manually annotated by people in online applications include incorrect labels, giving rise to the issue of label ambiguity. This may lead to mislabelling in face annotation. Consequently, an efficient method is still essential to enhance the reliability of face annotation. Hence, in this work, a novel method named the Similarity Matrix-based Noise Label Refinement (SMNLR) is proposed, which effectively predicts the accurate label from the noisy labelled facial images. To enhance the performance of the proposed method, the deep learning technique named Convolutional Neural Networks (CNN) is used for feature representation. Several experiments are conducted to evaluate the effectiveness of the proposed face annotation method using the LFW, IMFDB and Yahoo datasets. The experimental results clearly illustrate the robustness of the proposed SMNLR method in dealing with noisy labelled faces

    Retrieval-based face annotation by weak label regularized local coordinate coding

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    Singapore National Research Foundatio
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