基于改进SSD的图像电子证据筛选

Yafei Liu, Liehui Jiang, Tieming Liu, Youwei Zhang
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引用次数: 1

摘要

随着信息技术的发展,电子证据在司法审判中发挥着越来越重要的作用。在司法取证中,从大量的电子数据中准确、快速地提取有效的电子证据是一个难点。传统手段一般采用人工识别采集,耗时长,效率低。采用SSD目标检测与识别算法代替传统方法可以有效地减少筛选证据的时间,但基础SSD神经网络对小目标容易检测失误。针对上述问题,提出了一种改进的基于ssd的图像电子证据筛选方法。该方法对SSD神经网络进行自适应优化,在网络的浅卷积层引入注意机制模块,提高特征映射的表示能力,并将不同卷积层获得的图像特征与多尺度特征融合,增加浅特征信息。利用实验数据对改进算法进行了验证,并对实验结果进行了分析。结果表明,与原SSD神经网络算法相比,改进算法的检测平均精度提高了4.7%,达到84.3%,表明了改进算法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Electronic Evidence Screening Based on Improved SSD
With the development of information technology, electronic evidence plays an increasingly important role in the judicial trial. In Judicial Forensics, it is difficult to extract effective electronic evidence accurately and quickly from a large number of electronic data. Traditional means generally take artificial identification to collect, which takes a long time and is not efficient. Using SSD target detection and recognition algorithm instead of traditional means can effectively reduce the time of screening evidence, but the basic SSD neural network is prone to miss detection for small targets. To solve the above problems, an improved SSD-based image electronic evidence screening method is proposed. This method optimizes the SSD neural network adaptively, introduces the attention mechanism module in the shallow convolution layer of the network to improve the representation ability of the feature map, and fuses the image features obtained from different convolution layers with multi-scale features to increase the shallow feature information. The experimental data are used to test the improved algorithm and analyze the experimental results. It is found that compared with the original SSD neural network algorithm, the detection mean average precision of the improved algorithm is increased by 4.7%, reaching 84.3%, which shows the feasibility and effectiveness of the improved algorithm.
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