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Titlebook: Artificial Neural Networks and Machine Learning – ICANN 2019: Image Processing; 28th International C Igor V. Tetko,Věra Kůrková,Fabian Thei

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Manfred Wick,Wulf Pinggera,Paul Lehmanninal image so that the overall performance of visualization, classification and segmentation tasks is considerably improved. Traditional techniques require manual fine-tuning of the parameters to control enhancement behavior. To date, recent Convolutional Neural Network (CNN) approaches frequently e
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Conference proceedings 19911st editionransparent object: due to refraction, the image is heavily distorted; the pinhole camera model alone can not be used and a distortion correction step is required. By directly modeling the geometry of the refractive media, we build the image generation process by tracing individual light rays from th
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Manfred Wick,Wulf Pinggera,Paul Lehmannistorted images for making decision on noise evaluation is rather limited. In this paper, we conducted psychophysical eye-tracking studies to deeply understand the process of image noise evaluation. We identified two different types of methodologies in the evaluation processing, speed-driven and acc
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Conference proceedings 19942nd editionages depends on the objects and text as well as the various semantic regions, hierarchical structure, and spatial layout. However, most recently designed fine-grained classification systems ignored this, the complex multi-level semantic structure of images associated with fine-grained classes has no
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Manfred Wick,Wulf Pinggera,Paul Lehmannesent the uncertainty of such detection. However, a measure of uncertainty could be expressed as the variance of the prediction by using Monte Carlo Dropout Sampling (MC Dropout). Although MC Dropout has often been applied to fully connected layers in a network in recent studies, many convolutional
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https://doi.org/10.1007/978-3-7091-4435-0 detection tasks. So, designing a special backbone network for detection tasks is one of the best solutions. In this paper, a backbone network named Dense Receptive Field Network (DRFNet) is proposed for object detection. DRFNet is based on Darknet-60 (our modified version of Darknet-53) and contain
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