SSD Object Detection Algorithm Based on Feature Fusion and Channel Attention

Leilei Fan, Jun-Peng Yu, Zhi-yi Hu
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Abstract

Abstract Aiming at the problems of low object detection accuracy due to complex background and insufficient semantic information of shallow features in the object detection SSD algorithm, this paper improves the existing SSD algorithm. First, the original vgg16 network is replaced by the ResNet50 network, and the residual network structure as well as the Batch Normalization layer are added, which are used to improve the accuracy of the feature extraction network; Second, a feature fusion module is designed to fuse adjacent feature maps to improve the detection effect by integrating contextual information; Third, the SE attention mechanism is introduced to give channel weights adaptively and enhance the useful feature channels; Finally, the object detection analysis experiments are conducted on the PASCAL VOC2012 dataset. The experimental results show that the improved SSD algorithm in this paper is able to achieve an mean average precision of 72.7% in the data set, which is 2.1% better than the original SSD-VGG16 and greatly improves the object detection effect.
基于特征融合和信道关注的SSD目标检测算法
摘要针对目标检测SSD算法中背景复杂、浅层特征语义信息不足导致目标检测精度低的问题,对现有SSD算法进行了改进。首先,将原有的vgg16网络替换为ResNet50网络,并加入残差网络结构和批处理归一化层,用于提高特征提取网络的精度;其次,设计特征融合模块,融合相邻特征映射,通过整合上下文信息提高检测效果;第三,引入SE注意机制自适应赋予信道权值,增强有用的特征信道;最后,在PASCAL VOC2012数据集上进行了目标检测分析实验。实验结果表明,本文改进的SSD算法在数据集中的平均精度达到72.7%,比原来的SSD- vgg16提高了2.1%,大大提高了目标检测效果。
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