Exploring the Effects of Data Augmentation for Drivable Area Segmentation
Srinjoy Bhuiya, Ayushman Kumar, Sankalok Sen

TL;DR
This paper investigates how data augmentation techniques can significantly improve the accuracy and robustness of drivable area segmentation models without increasing model complexity, using the Cityscapes Dataset.
Contribution
The study systematically analyzes various data augmentation strategies and demonstrates their effectiveness in enhancing segmentation performance on existing models.
Findings
Data augmentation improves model robustness and accuracy.
Performance gains achieved without increasing model complexity.
Results validated on the Cityscapes Dataset.
Abstract
The real-time segmentation of drivable areas plays a vital role in accomplishing autonomous perception in cars. Recently there have been some rapid strides in the development of image segmentation models using deep learning. However, most of the advancements have been made in model architecture design. In solving any supervised deep learning problem related to segmentation, the success of the model that one builds depends upon the amount and quality of input training data we use for that model. This data should contain well-annotated varied images for better working of the segmentation model. Issues like this pertaining to annotations in a dataset can lead the model to conclude with overwhelming Type I and II errors in testing and validation, causing malicious issues when trying to tackle real world problems. To address this problem and to make our model more accurate, dynamic, and…
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