SINet: A scale-insensitive convolutional neural network for fast vehicle detection

Vision-based vehicle detection approaches achieve incredible success in recent years with the development of deep convolutional neural network (CNN). However, existing CNN-based algorithms suffer from the problem that the convolutional features are scale-sensitive in object detection task but it is...

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Main Authors: HU, Xiaowei, XU, Xuemiao, XIAO, Yongjie, CHEN, Hao, HE, Shengfeng, QIN, Jing, HENG, Pheng-Ann
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Language:English
Published: Institutional Knowledge at Singapore Management University 2019
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Online Access:https://ink.library.smu.edu.sg/sis_research/8381
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spelling sg-smu-ink.sis_research-93842023-12-12T07:48:03Z SINet: A scale-insensitive convolutional neural network for fast vehicle detection HU, Xiaowei XU, Xuemiao XIAO, Yongjie CHEN, Hao HE, Shengfeng QIN, Jing HENG, Pheng-Ann Vision-based vehicle detection approaches achieve incredible success in recent years with the development of deep convolutional neural network (CNN). However, existing CNN-based algorithms suffer from the problem that the convolutional features are scale-sensitive in object detection task but it is common that traffic images and videos contain vehicles with a large variance of scales. In this paper, we delve into the source of scale sensitivity, and reveal two key issues: 1) existing RoI pooling destroys the structure of small scale objects and 2) the large intra-class distance for a large variance of scales exceeds the representation capability of a single network. Based on these findings, we present a scale-insensitive convolutional neural network (SINet) for fast detecting vehicles with a large variance of scales. First, we present a context-aware RoI pooling to maintain the contextual information and original structure of small scale objects. Second, we present a multi-branch decision network to minimize the intra-class distance of features. These lightweight techniques bring zero extra time complexity but prominent detection accuracy improvement. The proposed techniques can be equipped with any deep network architectures and keep them trained end-to-end. Our SINet achieves state-of-the-art performance in terms of accuracy and speed (up to 37 FPS) on the KITTI benchmark and a new highway dataset, which contains a large variance of scales and extremely small objects. 2019-03-01T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/8381 info:doi/10.1109/TITS.2018.2838132 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Fast object detection Intelligent transportation system Scale sensitivity Vehicle detection Artificial Intelligence and Robotics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Fast object detection
Intelligent transportation system
Scale sensitivity
Vehicle detection
Artificial Intelligence and Robotics
spellingShingle Fast object detection
Intelligent transportation system
Scale sensitivity
Vehicle detection
Artificial Intelligence and Robotics
HU, Xiaowei
XU, Xuemiao
XIAO, Yongjie
CHEN, Hao
HE, Shengfeng
QIN, Jing
HENG, Pheng-Ann
SINet: A scale-insensitive convolutional neural network for fast vehicle detection
description Vision-based vehicle detection approaches achieve incredible success in recent years with the development of deep convolutional neural network (CNN). However, existing CNN-based algorithms suffer from the problem that the convolutional features are scale-sensitive in object detection task but it is common that traffic images and videos contain vehicles with a large variance of scales. In this paper, we delve into the source of scale sensitivity, and reveal two key issues: 1) existing RoI pooling destroys the structure of small scale objects and 2) the large intra-class distance for a large variance of scales exceeds the representation capability of a single network. Based on these findings, we present a scale-insensitive convolutional neural network (SINet) for fast detecting vehicles with a large variance of scales. First, we present a context-aware RoI pooling to maintain the contextual information and original structure of small scale objects. Second, we present a multi-branch decision network to minimize the intra-class distance of features. These lightweight techniques bring zero extra time complexity but prominent detection accuracy improvement. The proposed techniques can be equipped with any deep network architectures and keep them trained end-to-end. Our SINet achieves state-of-the-art performance in terms of accuracy and speed (up to 37 FPS) on the KITTI benchmark and a new highway dataset, which contains a large variance of scales and extremely small objects.
format text
author HU, Xiaowei
XU, Xuemiao
XIAO, Yongjie
CHEN, Hao
HE, Shengfeng
QIN, Jing
HENG, Pheng-Ann
author_facet HU, Xiaowei
XU, Xuemiao
XIAO, Yongjie
CHEN, Hao
HE, Shengfeng
QIN, Jing
HENG, Pheng-Ann
author_sort HU, Xiaowei
title SINet: A scale-insensitive convolutional neural network for fast vehicle detection
title_short SINet: A scale-insensitive convolutional neural network for fast vehicle detection
title_full SINet: A scale-insensitive convolutional neural network for fast vehicle detection
title_fullStr SINet: A scale-insensitive convolutional neural network for fast vehicle detection
title_full_unstemmed SINet: A scale-insensitive convolutional neural network for fast vehicle detection
title_sort sinet: a scale-insensitive convolutional neural network for fast vehicle detection
publisher Institutional Knowledge at Singapore Management University
publishDate 2019
url https://ink.library.smu.edu.sg/sis_research/8381
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