Detecting Road Obstacles using Images and Neural Networks (Bachelor thesis)

Panagiotidis, Polyvios Polychronis


There has been significant progress in applying deep learning techniques to computer vision problems for perception scenarios, specifically for autonomous driving. This thesis explores some of these techniques and presents a detailed analysis of how deep learning tools can be used to perform computer vision for self-driving vehicles. It is an attempt to replicate concurrent research work, while discussing the advantages and disadvantages of different approaches. The thesis also combines different methods/components and presents a custom vehicle detection approach. The approach is based on generating a spatial grid of classifications, and then regressing bounding-boxes for pixels with a high object confidence score. The custom detection approach was tested on the KITTI object detection benchmark and was able to successfully detect objects of varying scale, lighting conditions and orientation. Additionally, an analysis of semantic segmentation techniques that use deep learning is presented and a few hand-picked approaches from literature are evaluated and compared. One of the approaches is replicated and tested on the Cityscapes benchmark for pixel level semantic segmentation. Detailed discussion and insights into future work are presented, which could be interesting for both academia and industry, especially in the area of deep learning and autonomous systems.
Institution and School/Department of submitter: Σχολή Τεχνολογικών Εφαρμογών / Τμήμα Μηχανικών Πληροφορικής
Keywords: Neural Networks;Images;Detecting Road Obstacles
Description: Πτυχιακή εργασία -- Σχολή Τεχνολογικών Εφαρμογών -- Τμήμα Μηχανικών Πληροφορικής, 2019 (α/α 10959)
URI: http://195.251.240.227/jspui/handle/123456789/14360
Item type: bachelorThesis
General Description / Additional Comments: Πτυχιακή εργασία
Item language: en
Item access scheme: account
Institution and School/Department of submitter: Σχολή Τεχνολογικών Εφαρμογών / Τμήμα Μηχανικών Πληροφορικής
Publication date: 2019-04-17
Bibliographic citation: Panagiotidis, P. (2019). Detecting Road Obstacles using Images and Neural Networks (Πτυχιακή εργασία). Αλεξάνδρειο ΤΕΙ Θεσσαλονίκης.
Abstract: There has been significant progress in applying deep learning techniques to computer vision problems for perception scenarios, specifically for autonomous driving. This thesis explores some of these techniques and presents a detailed analysis of how deep learning tools can be used to perform computer vision for self-driving vehicles. It is an attempt to replicate concurrent research work, while discussing the advantages and disadvantages of different approaches. The thesis also combines different methods/components and presents a custom vehicle detection approach. The approach is based on generating a spatial grid of classifications, and then regressing bounding-boxes for pixels with a high object confidence score. The custom detection approach was tested on the KITTI object detection benchmark and was able to successfully detect objects of varying scale, lighting conditions and orientation. Additionally, an analysis of semantic segmentation techniques that use deep learning is presented and a few hand-picked approaches from literature are evaluated and compared. One of the approaches is replicated and tested on the Cityscapes benchmark for pixel level semantic segmentation. Detailed discussion and insights into future work are presented, which could be interesting for both academia and industry, especially in the area of deep learning and autonomous systems.
Advisor name: Diamantaras, Konstantinos
Examining committee: Diamantaras, Konstantinos
Publishing department/division: Τμήμα Μηχανικών Πληροφορικής
Publishing institution: teithe
Number of pages: 63
Appears in Collections:Πτυχιακές Εργασίες

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