4 research outputs found

    Die japanische Wirtschaftsstrategie von Imitation und Innovation

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    Bedeutung von atrialen Niedervoltagearealen für die Ablationsbehandlung von Vorhofflimmern

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    Ein Wiederauftreten von VHF nach einer PVI und auch das Remodelling des linken Vorhofs, wodurch es im Verlauf zu fortschreitenden strukturellen und elektrophysiologischen Veränderungen des atrialen Gewebes kommt, sind zunehmend Untersuchungsgegenstand in vielen Studien. Der Fokus der vorliegenden Arbeit lag auf der Untersuchung von Patienten hinsichtlich low voltage arealen (LVA) im Vorhof an verschiedenen Eckpunkten. Die Bestimmung von Niedervoltagearealen erwies sich als entscheidendes Kriterium zur Bewertung von LVA. Niederspannungsbereiche scheinen ein eigenständiger Prozess zu sein

    Automatic Individual Identification of Patterned Solitary Species Based on Unlabeled Video Data

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    The manual processing and analysis of videos from camera traps is time-consuming and includes several steps, ranging from the filtering of falsely triggered footage to identifying and re-identifying individuals. In this study, we developed a pipeline to automatically analyze videos from camera traps to identify individuals without requiring manual interaction. This pipeline applies to animal species with uniquely identifiable fur patterns and solitary behavior, such as leopards (Panthera pardus). We assumed that the same individual was seen throughout one triggered video sequence. With this assumption, multiple images could be assigned to an individual for the initial database filling without pre-labeling. The pipeline was based on well-established components from computer vision and deep learning, particularly convolutional neural networks (CNNs) and scale-invariant feature transform (SIFT) features. We augmented this basis by implementing additional components to substitute otherwise required human interactions. Based on the similarity between frames from the video material, clusters were formed that represented individuals bypassing the open set problem of the unknown total population. The pipeline was tested on a dataset of leopard videos collected by the Pan African Programme: The Cultured Chimpanzee (PanAf) and achieved a success rate of over 83% for correct matches between previously unknown individuals. The proposed pipeline can become a valuable tool for future conservation projects based on camera trap data, reducing the work of manual analysis for individual identification, when labeled data is unavailable

    Automatic Individual Identification of Patterned Solitary Species Based on Unlabeled Video Data

    Get PDF
    The manual processing and analysis of videos from camera traps is time-consuming and includes several steps, ranging from the filtering of falsely triggered footage to identifying and re-identifying individuals. In this study, we developed a pipeline to automatically analyze videos from camera traps to identify individuals without requiring manual interaction. This pipeline applies to animal species with uniquely identifiable fur patterns and solitary behavior, such as leopards (Panthera pardus). We assumed that the same individual was seen throughout one triggered video sequence. With this assumption, multiple images could be assigned to an individual for the initial database filling without pre-labeling. The pipeline was based on well-established components from computer vision and deep learning, particularly convolutional neural networks (CNNs) and scale-invariant feature transform (SIFT) features. We augmented this basis by implementing additional components to substitute otherwise required human interactions. Based on the similarity between frames from the video material, clusters were formed that represented individuals bypassing the open set problem of the unknown total population. The pipeline was tested on a dataset of leopard videos collected by the Pan African Programme: The Cultured Chimpanzee (PanAf) and achieved a success rate of over 83% for correct matches between previously unknown individuals. The proposed pipeline can become a valuable tool for future conservation projects based on camera trap data, reducing the work of manual analysis for individual identification, when labeled data is unavailable
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