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COMPLEXITY-BASED PROGRESSIVE TRAINING FOR MACHINE VISION MODELS

机译:基于复杂性的机器视觉模型渐进式训练

摘要

Methods and systems for training machine vision models (MVMs) with "noisy" training datasets are described. A noisy set of images is received, where labels for some of the images are "noisy" and/or incorrect. A progressively-sequenced learning curriculum is designed for the noisy dataset, where the images that are easiest to learn machine-vision knowledge from are sequenced near the beginning of the curriculum and images that are harder to learn machine-vision knowledge from are sequenced later in the curriculum. An MVM is trained via providing the sequenced curriculum to a supervised learning method, so that the MVM learns from the easiest examples first and the harder training examples later, i. e., the MVM progressively accumulates knowledge from simplest to most complex. To sequence the curriculum, the training images are embedded in a feature space and the "complexity" of each image is determined via density distributions and clusters in the feature space.
机译:描述了用于使用“嘈杂的”训练数据集训练机器视觉模型(MVM)的方法和系统。收到一组嘈杂的图像,其中某些图像的标签为“嘈杂”和/或不正确。为嘈杂的数据集设计了一种顺序排序的学习课程,其中最容易学习机器视觉知识的图像在课程开始附近进行排序,而较难学习机器视觉知识的图像则在以后进行排序。课程。通过将序列课程提供给有监督的学习方法来训练MVM,以便MVM首先从最简单的示例中学习,然后从较难的训练示例中进行学习。例如,MVM从最简单到最复杂逐渐积累知识。为了对课程进行排序,将训练图像嵌入特征空间中,并通过特征空间中的密度分布和聚类确定每个图像的“复杂性”。

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