215 research outputs found

    A Modified Distortion Measurement Algorithm for Shape Coding

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    Efficient encoding of object boundaries has become increasingly prominent in areas such as content-based storage and retrieval, studio and television post-production facilities, mobile communications and other real-time multimedia applications. The way distortion between the actual and approximated shapes is measured however, has a major impact upon the quality of the shape coding algorithms. In existing shape coding methods, the distortion measure do not generate an actual distortion value, so this paper proposes a new distortion measure, called a modified distortion measure for shape coding (DMSC) which incorporates an actual perceptual distance. The performance of the Operational Rate Distortion optimal algorithm [1] incorporating DMSC has been empirically evaluated upon a number of different natural and synthetic arbitrary shapes. Both qualitative and quantitative results confirm the superior results in comparison with the ORD lgorithm for all test shapes, without any increase in computational complexity

    Image-Dependent Spatial Shape-Error Concealment

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    Existing spatial shape-error concealment techniques are broadly based upon either parametric curves that exploit geometric information concerning a shape's contour or object shape statistics using a combination of Markov random fields and maximum a posteriori estimation. Both categories are to some extent, able to mask errors caused by information loss, provided the shape is considered independently of the image/video. They palpably however, do not afford the best solution in applications where shape is used as metadata to describe image and video content. This paper presents a novel image-dependent spatial shape-error concealment (ISEC) algorithm that uses both image and shape information by employing the established rubber-band contour detecting function, with the novel enhancement of automatically determining the optimal width of the band to achieve superior error concealment. Experimental results corroborate both qualitatively and numerically, the enhanced performance of the new ISEC strategy compared with established techniques

    Linguistische Modellierung zur Erkennung Anatomischer Objekte

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    Eine neue Methode wird vorgestellt, die es erlaubt unscharfes Vorwissen uber Objektkonturen in ein Modell Aktiver Konturen ("Snakes") zu integrieren. Das neue Konzept der Fuzzy Snakes wurde entwickelt, um die Eigenschaften einer Objektkontur in intuitiver Weise beschreiben zu konnen. Zu diesen Eigenschaften zahlen neben der durch das bildgebende Verfahren bestimmten Erscheinung eines Objektes im Bild auch Formmerkmale. Dies wird erreicht, indem unscharfe Energiefunktionen eingefuhrt werden, die zusammen mit einer linguistischen Regelbasis jeden Abschnitt einer Fuzzy Snake beschreiben. Weiterhin kann die ungefahre Lange jedes Abschnittes angegeben werden, was sowohl die Segmentation verbessert, als auch die Komplexitat des Algorithmus verringert. Die abschnittsweise linguistische Beschreibung von Konturen ist besonders zur Erkennung starrer, aber auch verformbarer, anatomischer Objekte geeignet. Der Beitrag beschreibt ein Beispiel dafur, wie Fuzzy Snakes genutzt werden konnen, um Konturen anatomischer Objekte wie Handgelenksknochen in MRT- bzw. Rontgenbildfolgen detektieren zu konnen
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