通过相似物体的替换增强提高移动设备的目标检测精度

Jiseong Heo, Jihun Park
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引用次数: 0

摘要

深度神经网络训练需要大量的标记数据。在给定训练数据集的情况下,提高神经网络性能的一种典型策略是使用数据增强技术。本文的目标是提供一种新的图像增强方法来提高目标检测精度。将图像中的对象移除,并将训练数据集中的类似对象放置在其区域中。画内算法填充被消除但没有被类似对象填充的空间。在我们使用YOLOv4对象检测器对军用车辆数据集进行的测试中,我们的技术最多显示了2.32%的mAP改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Detection Accuracy Improvements of Mobility Equipments through Substitution Augmentation of Similar Objects
A vast amount of labeled data is required for deep neural network training. A typical strategy to improve the performance of a neural network given a training data set is to use data augmentation technique. The goal of this work is to offer a novel image augmentation method for improving object detection accuracy. An object in an image is removed, and a similar object from the training data set is placed in its area. An in-painting algorithm fills the space that is eliminated but not filled by a similar object. Our technique shows at most 2.32 percent improvements on mAP in our testing on a military vehicle dataset using the YOLOv4 object detector.
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