Publication detail

EVALUATIONOFTHENEURALNETWORKOBJECT DETECTIONINMULTI-MODALIMAGES

LIGOCKI, A.

Original Title

EVALUATIONOFTHENEURALNETWORKOBJECT DETECTIONINMULTI-MODALIMAGES

Type

conference paper

Language

English

Original Abstract

This paper studies the information gain of various data domains that are commonly used in the modern Advanced Driving Assistant Systems (ADAS) to develop robust systems that would increase traffic safety. We could see a fast growth of many Deep Convolutional Neural Networks (DCNN) based solutions during the last several years. These methods are state-of-the-art in object detection and semantic scene segmentation. We created a small annotated dataset of synchronized RGB, grayscale, thermal, and depth map images and used the modern DCNN framework tool to evaluate the object detection robustness of different data domains and their information gain process understanding the surrounding environment of the semi-autonomous driving agent.

Keywords

Multi-modal, Object Detection, Convolutional Neural Network, RGB, Grayscale, Thermal, IR, Depth Map

Authors

LIGOCKI, A.

Released

27. 4. 2021

Publisher

Brno University of Technology, Faculty of Electrical Engineering and Communication

Location

Brno

ISBN

978-80-214-5943-4

Book

PROCEEDINGS II OF THE 27TH STUDENT EEICT 2021 selected papers

Edition

1

Pages from

156

Pages to

160

Pages count

5

URL

BibTex

@inproceedings{BUT171475,
  author="Adam {Ligocki}",
  title="EVALUATIONOFTHENEURALNETWORKOBJECT DETECTIONINMULTI-MODALIMAGES",
  booktitle="PROCEEDINGS II OF THE 27TH STUDENT EEICT 2021 selected papers",
  year="2021",
  series="1",
  pages="156--160",
  publisher="Brno University of Technology, Faculty of Electrical Engineering and Communication",
  address="Brno",
  doi="10.13164/eeict.2021.156",
  isbn="978-80-214-5943-4",
  url="https://www.eeict.cz/eeict_download/archiv/sborniky/EEICT_2021_sbornik_2_v3_DOI.pdf"
}