Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems

To understand driving environments effectively, it is important to achieve accurate detection and classification of objects detected by sensor-based intelligent vehicle systems, which are significantly important tasks. Object detection is performed for the localization of objects, whereas object cla...

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Main Authors: Sang-Il Oh, Hang-Bong Kang
Format: Article
Language:English
Published: MDPI AG 2017-01-01
Series:Sensors
Subjects:
CCD
Online Access:http://www.mdpi.com/1424-8220/17/1/207
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spelling doaj-3aab06afd3fb4fe7888c5ea070fcd6cb2020-11-24T21:07:57ZengMDPI AGSensors1424-82202017-01-0117120710.3390/s17010207s17010207Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle SystemsSang-Il Oh0Hang-Bong Kang1Department of Media Engineering, Catholic University of Korea, 43-1, Yeoggok 2-dong, Wonmmi-gu, Bucheon-si, Gyeonggi-do 14662, KoreaDepartment of Media Engineering, Catholic University of Korea, 43-1, Yeoggok 2-dong, Wonmmi-gu, Bucheon-si, Gyeonggi-do 14662, KoreaTo understand driving environments effectively, it is important to achieve accurate detection and classification of objects detected by sensor-based intelligent vehicle systems, which are significantly important tasks. Object detection is performed for the localization of objects, whereas object classification recognizes object classes from detected object regions. For accurate object detection and classification, fusing multiple sensor information into a key component of the representation and perception processes is necessary. In this paper, we propose a new object-detection and classification method using decision-level fusion. We fuse the classification outputs from independent unary classifiers, such as 3D point clouds and image data using a convolutional neural network (CNN). The unary classifiers for the two sensors are the CNN with five layers, which use more than two pre-trained convolutional layers to consider local to global features as data representation. To represent data using convolutional layers, we apply region of interest (ROI) pooling to the outputs of each layer on the object candidate regions generated using object proposal generation to realize color flattening and semantic grouping for charge-coupled device and Light Detection And Ranging (LiDAR) sensors. We evaluate our proposed method on a KITTI benchmark dataset to detect and classify three object classes: cars, pedestrians and cyclists. The evaluation results show that the proposed method achieves better performance than the previous methods. Our proposed method extracted approximately 500 proposals on a 1226 × 370 image, whereas the original selective search method extracted approximately 10 6 × n proposals. We obtained classification performance with 77.72% mean average precision over the entirety of the classes in the moderate detection level of the KITTI benchmark dataset.http://www.mdpi.com/1424-8220/17/1/207multiple sensor fusiondecision level fusionobject detectionobject classificationobject recognitionLiDARCCD
collection DOAJ
language English
format Article
sources DOAJ
author Sang-Il Oh
Hang-Bong Kang
spellingShingle Sang-Il Oh
Hang-Bong Kang
Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
Sensors
multiple sensor fusion
decision level fusion
object detection
object classification
object recognition
LiDAR
CCD
author_facet Sang-Il Oh
Hang-Bong Kang
author_sort Sang-Il Oh
title Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
title_short Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
title_full Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
title_fullStr Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
title_full_unstemmed Object Detection and Classification by Decision-Level Fusion for Intelligent Vehicle Systems
title_sort object detection and classification by decision-level fusion for intelligent vehicle systems
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2017-01-01
description To understand driving environments effectively, it is important to achieve accurate detection and classification of objects detected by sensor-based intelligent vehicle systems, which are significantly important tasks. Object detection is performed for the localization of objects, whereas object classification recognizes object classes from detected object regions. For accurate object detection and classification, fusing multiple sensor information into a key component of the representation and perception processes is necessary. In this paper, we propose a new object-detection and classification method using decision-level fusion. We fuse the classification outputs from independent unary classifiers, such as 3D point clouds and image data using a convolutional neural network (CNN). The unary classifiers for the two sensors are the CNN with five layers, which use more than two pre-trained convolutional layers to consider local to global features as data representation. To represent data using convolutional layers, we apply region of interest (ROI) pooling to the outputs of each layer on the object candidate regions generated using object proposal generation to realize color flattening and semantic grouping for charge-coupled device and Light Detection And Ranging (LiDAR) sensors. We evaluate our proposed method on a KITTI benchmark dataset to detect and classify three object classes: cars, pedestrians and cyclists. The evaluation results show that the proposed method achieves better performance than the previous methods. Our proposed method extracted approximately 500 proposals on a 1226 × 370 image, whereas the original selective search method extracted approximately 10 6 × n proposals. We obtained classification performance with 77.72% mean average precision over the entirety of the classes in the moderate detection level of the KITTI benchmark dataset.
topic multiple sensor fusion
decision level fusion
object detection
object classification
object recognition
LiDAR
CCD
url http://www.mdpi.com/1424-8220/17/1/207
work_keys_str_mv AT sangiloh objectdetectionandclassificationbydecisionlevelfusionforintelligentvehiclesystems
AT hangbongkang objectdetectionandclassificationbydecisionlevelfusionforintelligentvehiclesystems
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