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Low- and high-fidelity classifiers applied to road-scene images

机译:低保真和高保真分类器应用于路况图像

摘要

Disclosures herein teach applying a set of sections spanning a down-sampled version of an image of a road-scene to a low-fidelity classifier to determine a set of candidate sections for depicting one or more objects in a set of classes. The set of candidate sections of the down-sampled version may be mapped to a set of potential sectors in a high-fidelity version of the image. A high-fidelity classifier may be used to vet the set of potential sectors, determining the presence of one or more objects from the set of classes. The low-fidelity classifier may include a first Convolution Neural Network (CNN) trained on a first training set of down-sampled versions of cropped images of objects in the set of classes. Similarly, the high-fidelity classifier may include a second CNN trained on a second training set of high-fidelity versions of cropped images of objects in the set of classes.
机译:本文的公开内容教导将跨越道路场景的图像的下采样版本的一组部分应用于低保​​真分类器,以确定用于描述一组类中的一个或多个对象的一组候选部分。下采样版本的候选部分的集合可以被映射到图像的高保真版本中的一组潜在扇区。可以使用高保真分类器来审核该组潜在扇区,从而从该组类中确定一个或多个对象的存在。低逼真度分类器可以包括第一卷积神经网络(CNN),该第一卷积神经网络在该类集合中的对象的裁剪图像的降采样版本的第一训练集合上训练。类似地,高保真分类器可以包括第二CNN,其在​​该组类别中的对象的裁剪图像的高保真版本的第二训练集合上训练。

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