Feature-based model selection for object detection from point cloud data
Kairi Tokuda, Ryoichi Shinkuma, Takehiro Sato, Eiji Oki

TL;DR
This paper introduces a feature-based model selection framework that dynamically chooses the most suitable deep learning model for object detection from point cloud data, improving accuracy in smart city monitoring applications.
Contribution
It proposes a novel framework that creates and selects among multiple DL models based on point cloud data features, addressing variability due to sensor and environment differences.
Findings
Detection accuracy varies up to 32% between models.
The framework effectively selects suitable models based on data features.
Experimental results confirm the importance of model selection for accuracy.
Abstract
Smart monitoring using three-dimensional (3D) image sensors has been attracting attention in the context of smart cities. In smart monitoring, object detection from point cloud data acquired by 3D image sensors is implemented for detecting moving objects such as vehicles and pedestrians to ensure safety on the road. However, the features of point cloud data are diversified due to the characteristics of light detection and ranging (LIDAR) units used as 3D image sensors or the install position of the 3D image sensors. Although a variety of deep learning (DL) models for object detection from point cloud data have been studied to date, no research has considered how to use multiple DL models in accordance with the features of the point cloud data. In this work, we propose a feature-based model selection framework that creates various DL models by using multiple DL methods and by utilizing…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · 3D Surveying and Cultural Heritage · Infrastructure Maintenance and Monitoring
