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General human action recognition requires understanding of various visual cues. In this paper, we propose a network architecture that computes and integrates the most important visual cues for action recognition: pose, motion, and the raw images. For the integration, we introduce a Markov chain model which adds cues successively. The resulting approach is efficient and applicable to action classification...
Object recognition approaches have recently been extended to yield, aside of the object class output, also viewpoint or pose. Training such approaches typically requires additional viewpoint or keypoint annotation in the training data or, alternatively, synthetic CAD models. In this paper, we present an approach that creates a dataset of images annotated with bounding boxes and viewpoint labels in...
Image-based License Plate Recognition (LPR) algorithms are the core modules of many Intelligent Transportation Systems (ITS). Different algorithms and approaches have been proposed so far. All of these methods have the following three steps in common: License Plate Localization, Character Segmentation & Character Recognition. There are many real-world issues encountered during the design of each...
This paper proposes a solution to reduce the energy consumption by bulk power consumers in distributed networks at the times that the network is to experience a sudden peak in consumption graph. This is done using an intelligent system in addition to one variable multi-tariff kWh-meter. Finally the results of applying this method, is estimated using the samples gathered from the energy consumption...
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