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Learning Data Augmentation Strategies for Object Detection

机译:用于对象检测的学习数据增强策略

摘要

Example aspects of the present disclosure are directed to systems and methods for learning data augmentation strategies for improved object detection model performance. In particular, example aspects of the present disclosure are directed to iterative reinforcement learning approaches in which, at each of a plurality of iterations, a controller model selects a series of one or more augmentation operations to be applied to training images to generate augmented images. For example, the controller model can select the augmentation operations from a defined search space of available operations which can, for example, include operations that augment the training image without modification of the locations of a target object and corresponding bounding shape within the image and/or operations that do modify the locations of the target object and bounding shape within the training image.
机译:本公开的示例方面针对用于学习数据增强策略以改善对象检测模型性能的系统和方法。特别地,本公开的示例方面针对迭代式强化学习方法,其中,在多个迭代中的每个迭代中,控制器模型选择一系列一个或多个扩增操作以应用于训练图像以生成扩增图像。例如,控制器模型可以从可用操作的定义搜索空间中选择增强操作,该操作可以例如包括在不修改目标对象的位置以及图像和/或图像内相应边界形状的情况下增强训练图像的操作。或确实会在训练图像中修改目标对象的位置和边界形状的操作。

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