Exploring robustness to viewpoint changes by creating a dataset of simulated dashcam videos

Turra, Riccardo (2023) Exploring robustness to viewpoint changes by creating a dataset of simulated dashcam videos. [Laurea magistrale], Università di Bologna, Corso di Studio in Ingegneria informatica [LM-DM270], Documento ad accesso riservato.
Documenti full-text disponibili:
[img] Documento PDF (Thesis)
Full-text non accessibile fino al 1 Gennaio 2025.
Disponibile con Licenza: Creative Commons: Attribuzione - Non commerciale - Condividi allo stesso modo 4.0 (CC BY-NC-SA 4.0)

Download (14MB) | Contatta l'autore

Abstract

The issue of changing viewpoints in driving scenarios introduces significant challenges for the performance and robustness of deep learning models trained to solve important tasks such as monocular depth estimation or semantic Bird’s Eye View (BEV) prediction. This research investigates the impact of vari- ous camera positions on model predictions, focusing on the non-trivial task of generating BEV semantic segmentation images from a monocular perspective input. To address the lack of suitable datasets in the literature, we created our own, featuring diverse dashcam-like acquisitions sampled from eight different viewpoints and counting, in total, 112,000 images with corresponding annota- tions. The evaluations we performed highlighted significant performance gaps (-34.15%) across common dashcam placements. Additionally, we proposed a solution to enhance model robustness, involving training with multiple camera poses, resulting in significant improvements (+16.39%) over baseline perfor- mance. In assessing the simulation-to-reality domain gap, we found a sub- stantial decrease (-70.35%) in model performance when comparing the results obtained on synthetic data with a comparable real dataset. In conclusion, this project contributes valuable insights into the challenges posed by varying camera positions in driving scenarios and the utilization of synthetically trained models on real data. The proposed solution enhances model robustness across both seen and unseen viewpoints, contributing to the advancement of vision models in the context of road safety and image-based applications for driving scenarios.

Abstract
Tipologia del documento
Tesi di laurea (Laurea magistrale)
Autore della tesi
Turra, Riccardo
Relatore della tesi
Correlatore della tesi
Scuola
Corso di studio
Ordinamento Cds
DM270
Parole chiave
Computer vision,Sim-to-real,Driving scenario,Bird's Eye View,Deep Neural Network,Viewpoint evaluation,Synthetic data
Data di discussione della Tesi
16 Dicembre 2023
URI

Altri metadati

Gestione del documento: Visualizza il documento

^