Evaluating the efficiency of a night-time, middle-range infrared sensor for applications in human detection and recognition

Author(s):  
Thirimachos Bourlai ◽  
John Von Dollen ◽  
Nikolaos Mavridis ◽  
Christopher Kolanko
Sensors ◽  
2019 ◽  
Vol 20 (1) ◽  
pp. 34 ◽  
Author(s):  
Jisoo Park ◽  
Jingdao Chen ◽  
Yong K. Cho ◽  
Dae Y. Kang ◽  
Byung J. Son

Night-time surveillance is important for safety and security purposes. For this reason, several studies have attempted to automatically detect people intruding into restricted areas by using infrared cameras. However, detecting people from infrared CCTV (closed-circuit television) is challenging because they are usually installed in overhead locations and people only occupy small regions in the resulting image. Therefore, this study proposes an accurate and efficient method for detecting people in infrared CCTV images during the night-time. For this purpose, three different infrared image datasets were constructed; two obtained from an infrared CCTV installed on a public beach and another obtained from a forward looking infrared (FLIR) camera installed on a pedestrian bridge. Moreover, a convolution neural network (CNN)-based pixel-wise classifier for fine-grained person detection was implemented. The detection performance of the proposed method was compared against five conventional detection methods. The results demonstrate that the proposed CNN-based human detection approach outperforms conventional detection approaches in all datasets. Especially, the proposed method maintained F1 scores of above 80% in object-level detection for all datasets. By improving the performance of human detection from infrared images, we expect that this research will contribute to the safety and security of public areas during night-time.


2018 ◽  
Vol 8 (10) ◽  
pp. 1967 ◽  
Author(s):  
Sebastian Budzan ◽  
Roman Wyżgolik ◽  
Witold Ilewicz

This paper presents a method for human detection using a laser scanner with vision or infrared images. Mobile applications require reliable and efficient methods for human detection, especially as a part of driver assistance systems, including pedestrian collision systems. The authors propose an efficient method for multimodal human detection based on a combination of the features and context information. Strictly, the human is detected in the vision/infrared images using a combination of local binary patterns and histogram of oriented gradients features with a neural network in a cascade manner. Next, using coordinates of detected humans from the vision system, the moving trajectory is predicted until the scanner working distance is reached by the individual human. Then the segmentation of data from the laser scanner is further carried out with respect to the predicted trajectory. Finally, human detection in the laser scanner working distance is performed based on modelling of the human legs. The modelling is based on the adaptive breakpoint detection algorithm and proposed improved polylines definition and fitting algorithm. The authors conducted a set of experiments in predefined scenarios, discussed the identified weakness and advantages of the proposed method, and outlined detailed future work, especially for night-time and low-light conditions.


2016 ◽  
Vol 194 ◽  
pp. 10-23 ◽  
Author(s):  
Qiang LIU ◽  
Wei ZHANG ◽  
Hongliang LI ◽  
King Ngi NGAN

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