| | Titre : | PAVEMENT CRACK RECOGNITION SMART SYSTEM |  | Type de document : | projet fin études |  | Auteurs : | Mohammed SALHI, Auteur |  | Année de publication : | 2017 |  | Langues : | Anglais (eng) |  | Mots-clés : | Pavement cracks, distress, drone, Hahn moments, image processing dataset, Convolutional neural networks, deep learning.
 |  | Index. décimale : | 1844/17 |  | Résumé : | The detection of pavement cracks in their early stages is considered to be one of the most important challenges that stockholders face during the reparation of the
 pavement condition. In other terms, the high severity cracks require huge budgets to
 fix and inflict heavy losses to the vehicles. Hence the need to build an embedded
 system that includes an autonomous unmanned aerial vehicle that sends data to the
 cloud where it is processed to classify the pavement distress. This report explains the
 different phases of the project. First, we select a new architecture of the deep learning
 known by convolutional neural network based on Hahn moments, to be used for
 image processing. Then, we reconstruct the INFOPAVE database to suit the study
 purposes. After that, we proceed to the training and tests, to reach an accuracy of
 100% in the training and 99.73% in the test. Later, we assemble an open hardware
 drone that replies to the needs of the project in terms of current specifications and
 perspectives in the future. Finally, the last part in the project focuses on the
 communication between the UAV and the stakeholders. The system components can
 be used separately in other such as studying the behavior of the pavement or using
 the UAV for collecting another type of data.
 
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PAVEMENT CRACK RECOGNITION SMART SYSTEM [projet fin Ă©tudes] / Mohammed SALHI , Auteur . - 2017.Langues  : Anglais (eng ) | Mots-clĂ©s : | Pavement cracks, distress, drone, Hahn moments, image processing dataset, Convolutional neural networks, deep learning.
 |  | Index. décimale : | 1844/17 |  | Résumé : | The detection of pavement cracks in their early stages is considered to be one of the most important challenges that stockholders face during the reparation of the
 pavement condition. In other terms, the high severity cracks require huge budgets to
 fix and inflict heavy losses to the vehicles. Hence the need to build an embedded
 system that includes an autonomous unmanned aerial vehicle that sends data to the
 cloud where it is processed to classify the pavement distress. This report explains the
 different phases of the project. First, we select a new architecture of the deep learning
 known by convolutional neural network based on Hahn moments, to be used for
 image processing. Then, we reconstruct the INFOPAVE database to suit the study
 purposes. After that, we proceed to the training and tests, to reach an accuracy of
 100% in the training and 99.73% in the test. Later, we assemble an open hardware
 drone that replies to the needs of the project in terms of current specifications and
 perspectives in the future. Finally, the last part in the project focuses on the
 communication between the UAV and the stakeholders. The system components can
 be used separately in other such as studying the behavior of the pavement or using
 the UAV for collecting another type of data.
 
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