An Exploratory Study on Judicial Image Quality Assessment Based on Deep Learning

Qiqi Gu, Weiling Cai, Shengcheng Yu, Zhenyu Chen
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引用次数: 3

Abstract

Images are important judicial materials. With the deepening of intelligent systems in the judicial area, image quality plays a vital role in the result of many judicial applications. This paper firstly introduces deep learning into judicial image quality assessment. Pre-trained convolutional neural network (CNN) models are fine-tuned and then used to extract image features. Based on the features extracted from CNN models, we convert them into specific numbers representing the quality. A preliminary experiment has been designed and conducted on three types of judicial images. The experimental results show that our approach can outperform the existing image processing technique. Images used as investigation materials are more distinctive than the other two types, and they need an independent model for analyzing.
基于深度学习的司法图像质量评价探索性研究
图像是重要的司法资料。随着智能系统在司法领域的深入,图像质量对许多司法应用的结果起着至关重要的作用。本文首次将深度学习引入到司法图像质量评价中。对预训练的卷积神经网络(CNN)模型进行微调,然后用于提取图像特征。基于从CNN模型中提取的特征,我们将其转换为代表质量的特定数字。对三种类型的司法形象进行了初步的设计和实验。实验结果表明,该方法优于现有的图像处理技术。作为调查资料的图像比其他两种类型更有特色,需要一个独立的模型来分析。
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