作者
Kuan-Hung Shih, Ching-Te Chiu, Jiou-Ai Lin, Yen-Yu Bu
发表日期
2019/8/21
期刊
IEEE transactions on neural networks and learning systems
卷号
31
期号
6
页码范围
2164-2173
出版商
IEEE
简介
In recent years, object detection became more and more important following the successful results from studies in deep learning. Two types of neural network architectures are used for object detection: one-stage and two-stage. In this paper, we analyze a widely used two-stage architecture called Faster R-CNN to improve the inference time and achieve real-time object detection without compromising on accuracy. To increase the computation efficiency, pruning is first adopted to reduce the weights in convolutional and fully connected (FC) layers. However, this reduces the accuracy of detection. To address this loss in accuracy, we propose a reduced region proposal network (RRPN) with dilated convolution and concatenation of multi-scale features. In the assisted multi-feature concatenation, we propose the intra-layer concatenation and proposal refinement to efficiently integrate the feature maps from different …
引用总数
20202021202220232024622221614
学术搜索中的文章
KH Shih, CT Chiu, JA Lin, YY Bu - IEEE transactions on neural networks and learning …, 2019