基于更快区域的卷积神经网络的人工和真实物体分类

Ritvik Sai Teegavarapu, Debojit Biswas
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引用次数: 0

摘要

对象检测和分类任务可以使用使用卷积神经网络(cnn)和基于区域的卷积神经网络(r - cnn)的机器学习(ML)方法有效地解决。在本研究中,评估了r - cnn区分人造物体和真实物体的数字图像的能力。还开发了单次检测(SSD)网络,作为基线方法和比较评估。实验设计使用几张真实和人造树叶的图像作为r - cnn的输入,这些r - cnn使用图像的不同建议区域进行训练和测试。采用平均精度(mAP)方法对r - cnn和ssd的性能进行了评价。本研究的结果表明,训练后的R-CNN在真实叶和人工叶的分类中表现良好,并且对包括最小训练数据和图像分辨率在内的许多实验因素的变化具有鲁棒性。在mAP值较高的分类任务中,r - cnn的表现也优于ssd。r - cnn的性能受到提议区域的影响,或者r - cnn用来确定所呈现对象(即叶子)的不同特征的子部分数量的影响。基于本研究有限实验的结果表明,r - cnn及其变体非常适合具有大量实际应用的对象分类任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Artificial and Real Objects Using Faster Region-Based Convolutional Neural Networks
Object detection and classification tasks can be addressed effectively using machine learning (ML) methods that use convolutional neural networks (CNNs) and region-based convolutional neural networks (R-CNNs). In this study, the ability of R-CNNs to distinguish between digital images of artificial and real objects is evaluated. A single-shot detection (SSD) network is also developed to serve as a baseline approach and for comparative evaluation. Experiments are designed using several images of real and artificial leaves as inputs to the R-CNNs that are trained and tested with different proposal areas of the images. The performances of R-CNNs and SSDs are evaluated using mean average precision (mAP) measure. Results from this study indicate that trained R-CNN s perform well in classification of real and artificial leaves and are robust in performance against changes in many of the experimental factors including minimal training data and resolution of the images. R-CNNs have also performed better than SSDs in the classification tasks with higher values of mAP. The performance of R-CNNs is affected by the proposal area, or the number of subsections the R-CNNs utilizes to determine distinct characteristics of the objects (i.e., leaves) presented. Results based on limited experiments from this study indicate the R-CNNs and their variants are ideally suited for object classification tasks with numerous real-world applications.
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