提高目标检测精度的学习率微调

Anusha Chamarty
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引用次数: 0

摘要

自动驾驶汽车、生物识别、国防安全、医疗领域疾病识别、视频监控和场景理解等无处不在的应用,激发了深度学习领域的大量研究。深度学习技术[1]已经成为从图像或视频中提取特征的强大工具,也导致了目标检测领域的重大突破。深度学习领域[2]主要是由于卷积神经网络(CNN)架构的改进而变得流行。深度学习模型的准确性取决于各种超参数,如“学习率”、“批量大小”、“Epoch速率”、“优化函数”、“激活函数”、“辍学率”等。确定这些超参数的最佳值可以提高目标检测的准确性。本文主要研究如何选择一个较好的“学习率”值,使目标检测精度达到最大。考虑了不同的数据集进行分析,并确定了每个数据集产生更好准确性的学习率。经过严格的实验,“学习率”和“数据集大小”之间形成了一种适用于任何数据集的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Tuning of Learning Rate for Improvement of Object Detection Accuracy
The ubiquitous applications like Autonomous vehicles, Biometric Recognition, Security in defence sector, Medical field for disease identification, Video surveillance and Scene understanding activated vast research in the realm of Deep Learning. Deep Learning techniques [1] have emerged as a powerful tool for Feature Extraction from images or videos and also led to remarkable breach in the field of Object Detection. The field of Deep Learning [2] is predominantly becoming popular due to the improvement of Convolution Neural Network (CNN) Architectures. The Deep Learning model's accuracy depends on various Hyper-Parameters such as 'Learning Rate', 'Batch Size', 'Epoch Rate', 'Optimization Function', 'Activation Function', 'Dropout Rate' etc. Identifying the best values of these Hyper-Parameters, improves the Object Detection accuracy. This paper mainly concentrates on the selection of a better value of 'Learning Rate', at which maximum Object Detection accuracy is obtained. Different Datasets are considered for analysis and the Learning Rate at which each dataset results better accuracy is identified. After rigorous experimentation, a relationship is formulated between 'Learning Rate' and 'Dataset Size' which holds good for any dataset.
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