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Reinforcement Learning for Improving Object Detection

机译:加固学习改进对象检测

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The performance of a trained object detection neural network depends a lot on the image quality. Generally, images are pre-processed before feeding them into the neural network and domain knowledge about the image dataset is used to choose the pre-processing techniques. In this paper, we introduce an algorithm called ObjectRL to choose the amount of a particular pre-processing to be applied to improve the object detection performances of pre-trained networks. The main motivation for ObjectRL is that an image which looks good to a human eye may not necessarily be the optimal one for a pre-trained object detector to detect objects.
机译:培训的物体检测神经网络的性能取决于图像质量。 通常,在将它们馈送到神经网络之前预处理图像和关于图像数据集的域知识用于选择预处理技术。 在本文中,我们介绍了一种称为ObjectRL的算法,以选择要应用的特定预处理的量,以改善预先训练的网络的对象检测性能。 ObjectR1的主要动机是看起来对人眼良好的图像可能不一定是用于预先训练的对象检测器来检测对象的最佳选择。

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