AGR-FCN: Adversarial Generated Region based on Fully Convolutional Networks for Single- and Multiple-Instance Object Detection

Rui Wang, J. Zou, Runnan Qin, Liang Zhang
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引用次数: 1

Abstract

Addressing the problem that object instance detection has poor detection effect on occluded objects in unstructured environment when using deep learning network, we explore the use of the strategy of adversarial learning in this paper. A three-step pipeline is carried to build a novel learning framework denoted as Adversarial Generated Region-based Fully Convolutional Networks (AGR-FCN). Our method first training the noted deep model Region-based Fully Convolutional Networks (R-FCN), and then an Adversarial Mask Dropout Network (AMDN), which can generate occlusion features for training samples, is designed based on the trained R-FCN. Through the training strategy of adversarial learning between network R-FCN and network AMDN, the ability of network R-FCN to learn the features of occluded objects as well as its instance-level object detection performance is improved. Numerical experiments are conducted for instance detection to compare our proposed AGR-FCN with the original R-FCN on the self-made BHGI Database and the public database GMU Kitchen Dataset, which demonstrate that our proposed AGR-FCN outperforms original R-FCN and can achieve an average detection accuracy of nearly 90%.
AGR-FCN:基于全卷积网络的对抗生成区域单实例和多实例目标检测
针对使用深度学习网络时,对象实例检测对非结构化环境中遮挡对象检测效果较差的问题,本文探索了对抗性学习策略的使用。采用三步流程构建了一种新的学习框架,称为基于区域的对抗生成全卷积网络(AGR-FCN)。我们的方法首先训练深度模型基于区域的全卷积网络(R-FCN),然后基于训练好的R-FCN设计一个可以为训练样本生成遮挡特征的对抗Mask Dropout网络(AMDN)。通过网络R-FCN与网络AMDN之间对抗学习的训练策略,提高了网络R-FCN学习遮挡目标特征的能力,提高了网络R-FCN的实例级目标检测性能。在自制的BHGI数据库和公共数据库GMU Kitchen Dataset上进行了实例检测的数值实验,将本文提出的AGR-FCN与原始的R-FCN进行了比较,结果表明,本文提出的AGR-FCN优于原始的R-FCN,平均检测准确率接近90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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