scholarly journals A SLIDING WINDOW METHOD FOR DETECTING CORNERS OF OPENINGS FROM TERRESTRIAL LIDAR DATA

Author(s):  
J. Li ◽  
B. Xiong ◽  
F. Biljecki ◽  
G. Schrotter

<p><strong>Abstract.</strong> Architectural building models (LoD3) consist of detailed wall and roof structures including openings, such as doors and windows. Openings are usually identified through corner and edge detection, based on terrestrial LiDAR point clouds. However, singular boundary points are mostly detected by analysing their neighbourhoods within a small search area, which is highly sensitive to noise. In this paper, we present a global-wide sliding window method on a projected fa&amp;ccedil;ade to reduce the influence of noise. We formulate the gradient of point density for the sliding window to inspect the change of fa&amp;ccedil;ade elements. With derived symmetry information from statistical analysis, border lines of the changes are extracted and intersected generating corner points of openings. We demonstrate the performance of the proposed approach on the static and mobile terrestrial LiDAR data with inhomogeneous point density. The algorithm detects the corners of repetitive and neatly arranged openings and also recovers angular points within slightly missing data areas. In the future we will extend the algorithm to detect disordered openings and assist to fa&amp;ccedil;ade modelling, semantic labelling and procedural modelling.</p>

Author(s):  
Jyoti Malik ◽  
G. Sainarayanan ◽  
Ratna Dahiya

Authentication time is the main and important part of the authentication system. Normally the response time should be fast but as the number of persons in the database increases, there is probability of more response time taken for authentication. The need of fast authentication system arises so that authentication time (matching time) is very less. This paper proposes a sliding window approach to make fast authentication system. The highlight of sliding window method is constant matching time, fast and can match translated images also. Several palmprint matching methods like match by correlation etc. are dependent upon the number of corners detected and so is the matching time. In sliding window method, matching time is constant as the numbers of matching operations are limited and the matching time is independent of the number of corners detected. The palmprint corner features extracted using two approaches Phase Congruency Corner Detector and Harris Corner Detector are binarized so that only useful information (features) is matched. The two approaches of Phase Congruency Corner Detector and Harris Corner Detector, when matched with hamming distance using sliding window can achieve recognition rate of 97.7% and 97.5% respectively.


2017 ◽  
Vol 4 (1) ◽  
pp. 1304499 ◽  
Author(s):  
Adamu Muhammad Noma ◽  
Abdullah Muhammed ◽  
Zuriati Ahmad Zukarnain ◽  
Muhammad Afendee Mohamed ◽  
Duc Pham

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