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Erschienen in: Neural Computing and Applications 15/2021

02.02.2021 | Original Article

Single class detection-based deep learning approach for identification of road safety attributes

verfasst von: Pubudu Sanjeewani, Brijesh Verma

Erschienen in: Neural Computing and Applications | Ausgabe 15/2021

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Abstract

Automatic detection of road safety attributes is an important step in designing a reliable road safety system. Due to the outstanding performance over the handcraft feature extraction-based methods for detecting objects, deep learning can be used to develop a robust road safety system. However, there are many challenges in using deep learning models. Firstly, they require a large dataset for training. Secondly, a class imbalance is a common problem in deep learning models. Finally, when a new attribute is introduced to a deep learning model, the whole model must be re-trained using all training samples which requires a lot of time. In order to solve some of these problems, we propose a novel single class detection-based deep learning approach for the identification of safety attributes in roadside video data. The approach is based on fusion of multiple fully convolutional network (FCN) models. Each model is trained to detect a single attribute/class using two classes (single attribute vs all other attributes) datasets. The proposed approach was evaluated on data provided by the Department of Transport and Main Roads (DTMR). The proposed approach achieved high accuracy and a new attribute can be added to the system without retraining the whole system.

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Literatur
2.
Zurück zum Zitat Luo X, Zhu J, Yu Q (2019) Efficient convNets for fast traffic sign recognition. IET Intell Transp Syst 13(6):1011–1015CrossRef Luo X, Zhu J, Yu Q (2019) Efficient convNets for fast traffic sign recognition. IET Intell Transp Syst 13(6):1011–1015CrossRef
3.
Zurück zum Zitat Wang C (2018) Research and application of traffic sign detection and recognition based on deep learning. In: International conference robots and intelligent systems (ICRIS), Changsha, China, pp 150–152 Wang C (2018) Research and application of traffic sign detection and recognition based on deep learning. In: International conference robots and intelligent systems (ICRIS), Changsha, China, pp 150–152
4.
Zurück zum Zitat Hur J, Kang S-N, Seo S-W (2013) Multi-lane detection in urban driving environments using conditional random fields. In: Proceedings on IEEE intelligent vehicle symposium (IV), Gold Coast, Queensland, Australia, pp 1297–1302 Hur J, Kang S-N, Seo S-W (2013) Multi-lane detection in urban driving environments using conditional random fields. In: Proceedings on IEEE intelligent vehicle symposium (IV), Gold Coast, Queensland, Australia, pp 1297–1302
5.
Zurück zum Zitat Wu P-C, Chang C-Y, Lin CH (2014) Lane-mark extraction for automobiles under complex conditions. Pattern Recognit 47(8):2756–2767CrossRef Wu P-C, Chang C-Y, Lin CH (2014) Lane-mark extraction for automobiles under complex conditions. Pattern Recognit 47(8):2756–2767CrossRef
6.
Zurück zum Zitat Yang Y, Luo H, Xu H, Wu F (2016) Towards real-time traffic sign detection and classification. IEEE Trans Intell Transp Syst (ITS) 17(7):2022–2031CrossRef Yang Y, Luo H, Xu H, Wu F (2016) Towards real-time traffic sign detection and classification. IEEE Trans Intell Transp Syst (ITS) 17(7):2022–2031CrossRef
7.
Zurück zum Zitat Gonzalez Á et al (2011) Automatic traffic signs and panels inspection system using computer vision. IEEE Trans Intell Transp Syst (ITS) 12(2):485–499CrossRef Gonzalez Á et al (2011) Automatic traffic signs and panels inspection system using computer vision. IEEE Trans Intell Transp Syst (ITS) 12(2):485–499CrossRef
8.
Zurück zum Zitat Barnes N, Zelinsky A, Fletcher LS (2008) Real-time speed sign detection using the radial symmetry detector. IEEE Trans Intell Transp Syst (ITS) 9(2):322–332CrossRef Barnes N, Zelinsky A, Fletcher LS (2008) Real-time speed sign detection using the radial symmetry detector. IEEE Trans Intell Transp Syst (ITS) 9(2):322–332CrossRef
9.
Zurück zum Zitat Hoang TM, Nam SH, Park KR (2019) Enhanced detection and recognition of road markings based on adaptive region of interest and deep learning. IEEE Access 7:109817–109832CrossRef Hoang TM, Nam SH, Park KR (2019) Enhanced detection and recognition of road markings based on adaptive region of interest and deep learning. IEEE Access 7:109817–109832CrossRef
10.
Zurück zum Zitat Lee S et al (2017) VPGNet: vanishing point guided network for lane and road marking detection and recognition. In: Proceedings on IEEE international conference on computer vision (ICCV), Venice, Italy, pp 1965–1973 Lee S et al (2017) VPGNet: vanishing point guided network for lane and road marking detection and recognition. In: Proceedings on IEEE international conference on computer vision (ICCV), Venice, Italy, pp 1965–1973
11.
Zurück zum Zitat Acilo JPN, Cruz AGSD, Kaw MKL, Mabanta MD, Pineda VGG, Roxas EA (2018) Traffic sign integrity analysis using deep learning. In: IEEE 14th international colloquium on signal processing and its applications (CSPA), Batu Feringghi, Malaysia, pp 107–112 Acilo JPN, Cruz AGSD, Kaw MKL, Mabanta MD, Pineda VGG, Roxas EA (2018) Traffic sign integrity analysis using deep learning. In: IEEE 14th international colloquium on signal processing and its applications (CSPA), Batu Feringghi, Malaysia, pp 107–112
12.
Zurück zum Zitat Li J, Mei X, Prokhorov D, Tao D (2017) Deep neural network for structural prediction and lane detection in traffic scene. IEEE Trans Neural Netw Learn Syst 28(3):690–703CrossRef Li J, Mei X, Prokhorov D, Tao D (2017) Deep neural network for structural prediction and lane detection in traffic scene. IEEE Trans Neural Netw Learn Syst 28(3):690–703CrossRef
13.
Zurück zum Zitat Cho SJ, Seong Kim B, Kim TS, Kong S (2019) Enhancing GNSS performance and detection of road crossing in urban area using deep learning. In: IEEE intelligent transportation systems conference (ITSC), Auckland, New Zealand, pp 2115–2120 Cho SJ, Seong Kim B, Kim TS, Kong S (2019) Enhancing GNSS performance and detection of road crossing in urban area using deep learning. In: IEEE intelligent transportation systems conference (ITSC), Auckland, New Zealand, pp 2115–2120
14.
Zurück zum Zitat Aly M (2008) Real time detection of lane markers in urban streets. In: IEEE intelligent vehicles symposium (IV), Eindhoven, Netherlands, pp 7–12 Aly M (2008) Real time detection of lane markers in urban streets. In: IEEE intelligent vehicles symposium (IV), Eindhoven, Netherlands, pp 7–12
15.
Zurück zum Zitat Bangquan X, Xiong WX (2019) Real-time embedded traffic sign recognition using efficient convolutional neural network. IEEE Access 7:53330–53346CrossRef Bangquan X, Xiong WX (2019) Real-time embedded traffic sign recognition using efficient convolutional neural network. IEEE Access 7:53330–53346CrossRef
16.
Zurück zum Zitat Zhang W, Mi Z, Zheng Y, Gao Q, Li W (2019) Road marking segmentation based on siamese attention module and maximum stable external region. IEEE Access 7:143710–143720CrossRef Zhang W, Mi Z, Zheng Y, Gao Q, Li W (2019) Road marking segmentation based on siamese attention module and maximum stable external region. IEEE Access 7:143710–143720CrossRef
17.
Zurück zum Zitat Yuan Y, Xiong Z, Wang Q (2017) An incremental framework for video-based traffic sign detection, tracking, and recognition. IEEE Trans Intell Transp Syst (ITS) 18(7):1918–1929CrossRef Yuan Y, Xiong Z, Wang Q (2017) An incremental framework for video-based traffic sign detection, tracking, and recognition. IEEE Trans Intell Transp Syst (ITS) 18(7):1918–1929CrossRef
18.
Zurück zum Zitat He B, Ai R, Yan Y, Lang X (2016) Accurate and robust lane detection based on dual-view convolutional neutral network. In: Proceedings on IEEE intelligent vehicles symposium (IV), Gothenburg, Sweden, pp 1041–1046 He B, Ai R, Yan Y, Lang X (2016) Accurate and robust lane detection based on dual-view convolutional neutral network. In: Proceedings on IEEE intelligent vehicles symposium (IV), Gothenburg, Sweden, pp 1041–1046
19.
Zurück zum Zitat Chen T, Chen Z, Shi Q, Huang X (2015) Road marking detection and classification using machine learning algorithms. In: Proceedings on IEEE intelligent vehicles symposium (IV), Seoul, South Korea, pp 617–621 Chen T, Chen Z, Shi Q, Huang X (2015) Road marking detection and classification using machine learning algorithms. In: Proceedings on IEEE intelligent vehicles symposium (IV), Seoul, South Korea, pp 617–621
20.
Zurück zum Zitat Lee HS, Kim K (2018) Simultaneous traffic sign detection and boundary estimation using convolutional neural network. IEEE Trans Intell Transp Syst (ITS) 19(5):1652–1663CrossRef Lee HS, Kim K (2018) Simultaneous traffic sign detection and boundary estimation using convolutional neural network. IEEE Trans Intell Transp Syst (ITS) 19(5):1652–1663CrossRef
21.
Zurück zum Zitat Zou Q, Zhang Z, Li Q, Qi X, Wang Q, Wang S (2019) DeepCrack: learning hierarchical convolutional features for crack detection. IEEE Trans Image Process 28(3):1498–1512MathSciNetCrossRef Zou Q, Zhang Z, Li Q, Qi X, Wang Q, Wang S (2019) DeepCrack: learning hierarchical convolutional features for crack detection. IEEE Trans Image Process 28(3):1498–1512MathSciNetCrossRef
22.
Zurück zum Zitat Mandal V, Uong L, Adu-Gyamfi Y (2018) Automated road crack detection using deep convolutional neural networks. In: IEEE international conference on big data (Big Data), Seattle, WA, USA, pp 5212–5215 Mandal V, Uong L, Adu-Gyamfi Y (2018) Automated road crack detection using deep convolutional neural networks. In: IEEE international conference on big data (Big Data), Seattle, WA, USA, pp 5212–5215
23.
Zurück zum Zitat Jenkins MD, Carr TA, Iglesias MI, Buggy T, Morison G (2018) A deep convolutional neural network for semantic pixel-wise segmentation of road and pavement surface cracks. In: 26th European signal processing conference (EUSIPCO), Rome, pp 2120–2124 Jenkins MD, Carr TA, Iglesias MI, Buggy T, Morison G (2018) A deep convolutional neural network for semantic pixel-wise segmentation of road and pavement surface cracks. In: 26th European signal processing conference (EUSIPCO), Rome, pp 2120–2124
24.
Zurück zum Zitat Carr TA, Jenkins MD, Iglesias MI, Buggy T. Morison G (2018) Road crack detection using a single stage detector based deep neural network. In: IEEE workshop environmental, energy, and structural monitoring systems (EESMS), Salerno, Italy, pp 1–5 Carr TA, Jenkins MD, Iglesias MI, Buggy T. Morison G (2018) Road crack detection using a single stage detector based deep neural network. In: IEEE workshop environmental, energy, and structural monitoring systems (EESMS), Salerno, Italy, pp 1–5
25.
Zurück zum Zitat Hoang TM, Nguyen PH, Truong NQ, Lee YW, Park KR (2019) Deep retinaNet-based detection and classification of road markings by visible light camera sensors. Sensors 19:281CrossRef Hoang TM, Nguyen PH, Truong NQ, Lee YW, Park KR (2019) Deep retinaNet-based detection and classification of road markings by visible light camera sensors. Sensors 19:281CrossRef
26.
Zurück zum Zitat Zhu Y, Liao M, Yang M, Liu W (2018) Cascaded segmentation-detection networks for text-based traffic sign detection. IEEE Trans Intell Transp Syst (ITS) 19(1):209–219CrossRef Zhu Y, Liao M, Yang M, Liu W (2018) Cascaded segmentation-detection networks for text-based traffic sign detection. IEEE Trans Intell Transp Syst (ITS) 19(1):209–219CrossRef
27.
Zurück zum Zitat Wu T, Ranganathan A (2012) A practical system for road marking detection and recognition. In: IEEE intelligent vehicles symposium (IV), Alcala de Henares, Spain, pp 25–30 Wu T, Ranganathan A (2012) A practical system for road marking detection and recognition. In: IEEE intelligent vehicles symposium (IV), Alcala de Henares, Spain, pp 25–30
28.
Zurück zum Zitat Jan Z, Verma B, Affum J, Atabak S, Moir L (2018) A convolutional neural network based deep learning technique for identifying road attributes. In: International conference on image and vision computing New Zealand (IVCNZ), Auckland, New Zealand, pp 1–6 Jan Z, Verma B, Affum J, Atabak S, Moir L (2018) A convolutional neural network based deep learning technique for identifying road attributes. In: International conference on image and vision computing New Zealand (IVCNZ), Auckland, New Zealand, pp 1–6
29.
Zurück zum Zitat Sanjeewani TGP, Verma B (2019) Learning and analysis of AusRAP attributes from digital video recording for road safety. In: International conference on image and vision computing New Zealand (IVCNZ), Dunedin, New Zealand, pp 1–6 Sanjeewani TGP, Verma B (2019) Learning and analysis of AusRAP attributes from digital video recording for road safety. In: International conference on image and vision computing New Zealand (IVCNZ), Dunedin, New Zealand, pp 1–6
Metadaten
Titel
Single class detection-based deep learning approach for identification of road safety attributes
verfasst von
Pubudu Sanjeewani
Brijesh Verma
Publikationsdatum
02.02.2021
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 15/2021
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-021-05734-z

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