自动数据集放大及其在小数据集目标检测中的应用

Muhammad R. Abid, Riley Kiefer
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引用次数: 3

摘要

*目标检测是许多图像处理应用的核心过程。使用YoloV3深度学习方法进行对象检测,该方法在一组固定的对象上进行训练,并应用迁移学习来学习新构造对象的特征。迁移学习通常需要一个包含图像和标签的大型数据集,而标记图像数据可能需要很长时间。本文将介绍几种预处理管道方法,作为数据放大和数据增强的手段,使用以下转换的组合来增强小型数据集:旋转、缩放、翻转和灰度转换。利用各种实验数据预处理管道,对建筑安全帽检测模型进行了训练,并给出了训练结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Dataset Amplification and its Application to Small Dataset Object Detection Transfer Learning
∗Object detection is a core process for many image processing applications. Using the YoloV3 deep learning approach to object detection, which is trained on a fixed set of objects, transfer learning is applied to learn the features of novel construction objects. Transfer learning typically requires a large dataset of both images and labels, and labeling image data can take a long time. This paper will introduce several preprocessing pipeline approaches as a means of data amplification and data augmentation to enhance a small dataset using a combination of the following transformations: rotation, scaling, flipping, and grayscale conversion. A construction safety helmet detection model is trained using various experimental data preprocessing pipelines and the results are presented.
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