Lightweight Feature Enhancement Network for Single-Shot Object Detection
At present, the one-stage detector based on the lightweight model can achieve real-time speed, but the detection performance is challenging. To enhance the discriminability and robustness of the model extraction features and improve the detector’s detection performance for small objects, we propose...
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doaj-ef82f5ef4ee9460989ba184ec93af7352021-02-05T00:03:34ZengMDPI AGSensors1424-82202021-02-01211066106610.3390/s21041066Lightweight Feature Enhancement Network for Single-Shot Object DetectionPeng Jia0Fuxiang Liu1Key Laboratory of Dynamics and Control of Flight Vehicle, Ministry of Education, Beijing Institute of Technology, Beijing 100081, ChinaKey Laboratory of Dynamics and Control of Flight Vehicle, Ministry of Education, Beijing Institute of Technology, Beijing 100081, ChinaAt present, the one-stage detector based on the lightweight model can achieve real-time speed, but the detection performance is challenging. To enhance the discriminability and robustness of the model extraction features and improve the detector’s detection performance for small objects, we propose two modules in this work. First, we propose a receptive field enhancement method, referred to as adaptive receptive field fusion (ARFF). It enhances the model’s feature representation ability by adaptively learning the fusion weights of different receptive field branches in the receptive field module. Then, we propose an enhanced up-sampling (EU) module to reduce the information loss caused by up-sampling on the feature map. Finally, we assemble ARFF and EU modules on top of YOLO v3 to build a real-time, high-precision and lightweight object detection system referred to as the ARFF-EU network. We achieve a state-of-the-art speed and accuracy trade-off on both the Pascal VOC and MS COCO data sets, reporting 83.6% AP at 37.5 FPS and 42.5% AP at 33.7 FPS, respectively. The experimental results show that our proposed ARFF and EU modules improve the detection performance of the ARFF-EU network and achieve the development of advanced, very deep detectors while maintaining real-time speed.https://www.mdpi.com/1424-8220/21/4/1066object detectionreal-timeadaptive receptive field fusionenhanced up-sampling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peng Jia Fuxiang Liu |
spellingShingle |
Peng Jia Fuxiang Liu Lightweight Feature Enhancement Network for Single-Shot Object Detection Sensors object detection real-time adaptive receptive field fusion enhanced up-sampling |
author_facet |
Peng Jia Fuxiang Liu |
author_sort |
Peng Jia |
title |
Lightweight Feature Enhancement Network for Single-Shot Object Detection |
title_short |
Lightweight Feature Enhancement Network for Single-Shot Object Detection |
title_full |
Lightweight Feature Enhancement Network for Single-Shot Object Detection |
title_fullStr |
Lightweight Feature Enhancement Network for Single-Shot Object Detection |
title_full_unstemmed |
Lightweight Feature Enhancement Network for Single-Shot Object Detection |
title_sort |
lightweight feature enhancement network for single-shot object detection |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2021-02-01 |
description |
At present, the one-stage detector based on the lightweight model can achieve real-time speed, but the detection performance is challenging. To enhance the discriminability and robustness of the model extraction features and improve the detector’s detection performance for small objects, we propose two modules in this work. First, we propose a receptive field enhancement method, referred to as adaptive receptive field fusion (ARFF). It enhances the model’s feature representation ability by adaptively learning the fusion weights of different receptive field branches in the receptive field module. Then, we propose an enhanced up-sampling (EU) module to reduce the information loss caused by up-sampling on the feature map. Finally, we assemble ARFF and EU modules on top of YOLO v3 to build a real-time, high-precision and lightweight object detection system referred to as the ARFF-EU network. We achieve a state-of-the-art speed and accuracy trade-off on both the Pascal VOC and MS COCO data sets, reporting 83.6% AP at 37.5 FPS and 42.5% AP at 33.7 FPS, respectively. The experimental results show that our proposed ARFF and EU modules improve the detection performance of the ARFF-EU network and achieve the development of advanced, very deep detectors while maintaining real-time speed. |
topic |
object detection real-time adaptive receptive field fusion enhanced up-sampling |
url |
https://www.mdpi.com/1424-8220/21/4/1066 |
work_keys_str_mv |
AT pengjia lightweightfeatureenhancementnetworkforsingleshotobjectdetection AT fuxiangliu lightweightfeatureenhancementnetworkforsingleshotobjectdetection |
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