CVDec 27, 2023

ConstScene: Dataset and Model for Advancing Robust Semantic Segmentation in Construction Environments

arXiv:2312.16516v25 citationsh-index: 3ICPRAI
Originality Synthesis-oriented
AI Analysis

This addresses the need for reliable object detection in autonomous construction machines, but it is incremental as it focuses on dataset creation rather than novel algorithmic advances.

The paper tackles the problem of robust semantic segmentation in construction environments by introducing a new dataset with diverse weather and environmental conditions, and demonstrates its utility by evaluating state-of-the-art object detection algorithms, showing improved efficacy compared to existing datasets.

The increasing demand for autonomous machines in construction environments necessitates the development of robust object detection algorithms that can perform effectively across various weather and environmental conditions. This paper introduces a new semantic segmentation dataset specifically tailored for construction sites, taking into account the diverse challenges posed by adverse weather and environmental conditions. The dataset is designed to enhance the training and evaluation of object detection models, fostering their adaptability and reliability in real-world construction applications. Our dataset comprises annotated images captured under a wide range of different weather conditions, including but not limited to sunny days, rainy periods, foggy atmospheres, and low-light situations. Additionally, environmental factors such as the existence of dirt/mud on the camera lens are integrated into the dataset through actual captures and synthetic generation to simulate the complex conditions prevalent in construction sites. We also generate synthetic images of the annotations including precise semantic segmentation masks for various objects commonly found in construction environments, such as wheel loader machines, personnel, cars, and structural elements. To demonstrate the dataset's utility, we evaluate state-of-the-art object detection algorithms on our proposed benchmark. The results highlight the dataset's success in adversarial training models across diverse conditions, showcasing its efficacy compared to existing datasets that lack such environmental variability.

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