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RESEARCH PRODUCT
Deep Learning-Based Real-Time Object Detection in Inland Navigation
Metzli Ramirez-martinezPhilippe BrunetWided HammediMohamed Ayoub MessousSidi-mohamed Senoucisubject
Computer scienceObject detection02 engineering and technologyMachine learningcomputer.software_genreConvolutional neural networkDomain (software engineering)[SPI]Engineering Sciences [physics]0502 economics and businessMachine learning0202 electrical engineering electronic engineering information engineeringTrainingInland navigationAdaptation (computer science)050210 logistics & transportationArtificial neural networkbusiness.industryDeep learning05 social sciencesData modelsObject detectionNavigationRoadsData set020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerNeural networksdescription
International audience; Semi-autonomous and fully-autonomous systems must have knowledge about the objects in their environment to ensure a safe navigation. Modern approaches implement deep learning techniques to train a neural network for object detection. This project will study the effectiveness of using several promising algorithms such as Faster R-CNN, SSD, and different versions of YOLO, to detect, classify, and track objects in near real-time fluvial domain. Since no dataset is available for this purpose in literature, we first started by annotating a dataset of 2488 images with almost 35 400 annotations for training the convolutional neural network architectures. We made this data set openly accessible for the community working on this area. The other contribution of this research is the adaptation and the configuration of deep learning techniques used in other domains such as maritime and road domain to fluvial domain for autonomous vessels in which high accuracy and fast processing are vital. Experiments demonstrated that detecting objects in such environment is plausible in near real time with the selected algorithms.
year | journal | country | edition | language |
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2019-12-09 |