SUM: A Benchmark Dataset of Semantic Urban Meshes

02/27/2021
by   Weixiao Gao, et al.
98

Recent developments in data acquisition technology allow us to collect 3D texture meshes quickly. Those can help us understand and analyse the urban environment, and as a consequence are useful for several applications like spatial analysis and urban planning. Semantic segmentation of texture meshes through deep learning methods can enhance this understanding, but it requires a lot of labelled data. This paper introduces a new benchmark dataset of semantic urban meshes, a novel semi-automatic annotation framework, and an open-source annotation tool for 3D meshes. In particular, our dataset covers about 4 km2 in Helsinki (Finland), with six classes, and we estimate that we save about 600 hours of labelling work using our annotation framework, which includes initial segmentation and interactive refinement. Furthermore, we compare the performance of several representative 3D semantic segmentation methods on our annotated dataset. The results show our initial segmentation outperforms other methods and achieves an overall accuracy of 93.0 training time compared to other deep learning methods. We also evaluate the effect of the input training data, which shows that our method only requires about 7 whereas KPConv needs at least 33

READ FULL TEXT

page 3

page 8

page 9

page 11

page 12

page 13

page 16

page 17

research
02/21/2023

Semantic Segmentation of Urban Textured Meshes Through Point Sampling

Textured meshes are becoming an increasingly popular representation comb...
research
07/02/2018

Simplifying Urban Data Fusion with BigSUR

Our ability to understand data has always lagged behind our ability to c...
research
02/07/2022

PSSNet: Planarity-sensible Semantic Segmentation of Large-scale Urban Meshes

We introduce a novel deep learning-based framework to interpret 3D urban...
research
04/12/2017

Semantic3D.net: A new Large-scale Point Cloud Classification Benchmark

This paper presents a new 3D point cloud classification benchmark data s...
research
08/23/2022

Semi-Automatic Labeling and Semantic Segmentation of Gram-Stained Microscopic Images from DIBaS Dataset

In this paper, a semi-automatic annotation of bacteria genera and specie...
research
07/14/2021

Synthesis in Style: Semantic Segmentation of Historical Documents using Synthetic Data

One of the most pressing problems in the automated analysis of historica...
research
02/25/2021

Reducing Labelled Data Requirement for Pneumonia Segmentation using Image Augmentations

Deep learning semantic segmentation algorithms can localise abnormalitie...

Please sign up or login with your details

Forgot password? Click here to reset