The vehicle-based mobile mapping system (MMS) is effective for capturing 3D shapes and images of roadside objects. The laser scanner and cameras on the MMS capture point-clouds and sequential digital images synchronously during driving. In this paper, we propose a method for detecting and classifying pole-like objects using both point-clouds and images captured using the MMS. In our method, pole-like objects are detected from point-clouds, and then target objects, which are objects attached to poles, are extracted for identifying the types of pole-like objects. For associating each target object with images, the points of the target object are projected onto images, and the image of the target object is cropped. Each pole-like object is represented as a feature vector, which are calculated from point-clouds and images. The feature values of a point-cloud are calculated by point processing, and the ones of the cropped image are calculated using a convolutional neural network. The feature values of point-clouds and images are unified, and they are used as the input to machine learning. In experiments, we classified pole-like objects using three methods. The first method used only point-clouds, the second used only images, and the third used both point-clouds and images. The experimental results showed that the third method could most accurately classify pole-like objects.
[1]
Hiroshi Masuda,et al.
DETECTION AND CLASSIFICATION OF POLE-LIKE OBJECTS FROM MOBILE MAPPING DATA
,
2015
.
[2]
Pedro Arias,et al.
Traffic sign detection in MLS acquired point clouds for geometric and image-based semantic inventory
,
2016
.
[3]
Boris Jutzi,et al.
Semantic 3D scene interpretation: A framework combining optimal neighborhood size selection with relevant features
,
2014
.
[4]
Leo Breiman,et al.
Random Forests
,
2001,
Machine Learning.
[5]
Vladimir G. Kim,et al.
Shape-based recognition of 3D point clouds in urban environments
,
2009,
2009 IEEE 12th International Conference on Computer Vision.
[6]
Wenyu Liu,et al.
Traffic sign detection and recognition using fully convolutional network guided proposals
,
2016,
Neurocomputing.
[7]
Hongbin Zha,et al.
Segmentation and classification of range image from an intelligent vehicle in urban environment
,
2010,
2010 IEEE/RSJ International Conference on Intelligent Robots and Systems.
[8]
Robert C. Bolles,et al.
A RANSAC-Based Approach to Model Fitting and Its Application to Finding Cylinders in Range Data
,
1981,
IJCAI.