Search Results for author: Kyle McCullough

Found 7 papers, 1 papers with code

STPLS3D: A Large-Scale Synthetic and Real Aerial Photogrammetry 3D Point Cloud Dataset

4 code implementations17 Mar 2022 Meida Chen, Qingyong Hu, Zifan Yu, Hugues Thomas, Andrew Feng, Yu Hou, Kyle McCullough, Fengbo Ren, Lucio Soibelman

Specifically, we introduce a synthetic aerial photogrammetry point clouds generation pipeline that takes full advantage of open geospatial data sources and off-the-shelf commercial packages.

3D Instance Segmentation 3D Semantic Segmentation

Ground material classification for UAV-based photogrammetric 3D data A 2D-3D Hybrid Approach

no code implementations24 Sep 2021 Meida Chen, Andrew Feng, Yu Hou, Kyle McCullough, Pratusha Bhuvana Prasad, Lucio Soibelman

For ground material segmentation, we utilized an existing convolutional neural network architecture (i. e., 3DMV) which was originally designed for segmenting RGB-D sensed indoor data.

Material Classification object-detection +1

3D photogrammetry point cloud segmentation using a model ensembling framework

no code implementations Journal of Computing in Civil Engineering 2020 Meida Chen, Andrew Feng, Kyle McCullough, Pratusha Bhuvana Prasad, Ryan McAlinden, Lucio Soibelman

In this paper, we introduce a model ensembling framework for segmenting a 3D photogrammetry point cloud into top-level terrain elements (i. e., ground, human-made objects, and vegetation).

3D Reconstruction Point Cloud Segmentation

Utilizing Satellite Imagery Datasets and Machine Learning Data Models to Evaluate Infrastructure Change in Undeveloped Regions

no code implementations1 Sep 2020 Kyle McCullough, Andrew Feng, Meida Chen, Ryan McAlinden

A goal of this research is to allow automated monitoring for largescale infrastructure projects, such as railways, to determine reliable metrics that define and predict the direction construction initiatives could take, allowing for a directed monitoring via narrowed and targeted satellite imagery requests.

BIG-bench Machine Learning

Generating synthetic photogrammetric data for training deep learning based 3D point cloud segmentation models

no code implementations21 Aug 2020 Meida Chen, Andrew Feng, Kyle McCullough, Pratusha Bhuvana Prasad, Ryan McAlinden, Lucio Soibelman

At I/ITSEC 2019, the authors presented a fully-automated workflow to segment 3D photogrammetric point-clouds/meshes and extract object information, including individual tree locations and ground materials (Chen et al., 2019).

Point Cloud Segmentation

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