QUAN Yu, LI Zhi-xin, ZHANG Can-long, et al. Fusing Deep Dilated Convolutions Network and Light-Weight Network for Object Detection[J]. Acta Electronica Sinica, 2020, 48(2): 390-397.
DOI:
QUAN Yu, LI Zhi-xin, ZHANG Can-long, et al. Fusing Deep Dilated Convolutions Network and Light-Weight Network for Object Detection[J]. Acta Electronica Sinica, 2020, 48(2): 390-397. DOI: 10.3969/j.issn.0372-2112.2020.02.023.
Fusing Deep Dilated Convolutions Network and Light-Weight Network for Object Detection
Object detection is an important research direction in the field of computer vision.In recent years
object detection has made great advances in public datasets
and there are also breakthroughs in algorithmic performance. In order to improve the accuracy and speed performance of two-stage object detection
this paper proposes a detection model based on transfer learning method that fuses the deep dilated convolutions network and the light-weight network. First
the dilated convolutions network is used to replace the convolutional residual module in the backbone network
namely deep dilated convolution network (D_dNet-65). Then
by compressing the pretrained feature map and adding an 81-class fully connected layer to replace the original two layers
namely light-weight network. Finally
the transfer learning method is introduced in the pretraining to optimize the model (D_dNet and light-weight network). The experiment was carried out on a typical data set
MSCOCO and VOC07. And the experiment shows that the method proposed in this paper has good effectiveness and scalability.