Abnormal activity detection using shear transformed spatio-temporal regions at the surveillance network edge

2020 ◽  
Vol 79 (37-38) ◽  
pp. 27511-27532
Author(s):  
Michael George ◽  
Babita Roslind Jose ◽  
Jimson Mathew
2018 ◽  
Vol 13 (1) ◽  
pp. 23-30 ◽  
Author(s):  
Michael George ◽  
Babita Roslind Jose ◽  
Jimson Mathew ◽  
Pranjali Kokare

Sensors ◽  
2016 ◽  
Vol 16 (6) ◽  
pp. 822 ◽  
Author(s):  
Xiaomu Luo ◽  
Huoyuan Tan ◽  
Qiuju Guan ◽  
Tong Liu ◽  
Hankz Zhuo ◽  
...  

Author(s):  
Suriya Pinitkan ◽  
Nawaporn Wisitpongphan

As aging society era is getting near, number of elders who live alone is increasing. These people often need special care. Due to this reason, we propose Abnormal Activity Detection and Notification Platform (AADN) for Real-Time Ad Hoc Network which can help taking care of these people. The proposed platform relies on human tracking using cameras that are installed in different rooms inside the house. AADN will take as input images from the cameras to process and output activity in the form of human pose and objects with their relative distant to the detected human. Relationship Degree of Human Object Interaction (RD-HOI) will be analyzed every minute and be used to distinguish abnormal behavior by means of decision tree. In addition, activities will be used to generate routine behavior log and AADN will notify the person in charge of taking care of the subject if the detected activity differs from the routine. The proposed platform can achieve human pose accuracy of up to 99.66% by using COCO with VGG-NB model and can correctly identify object 68% of the time. Our experiments showed that AADN could notify abnormal activity by using RD-HOI when human and harmful objects were clearly visible in the picture and could correctly notify abnormal activity when time spent in a certain activity differed from the routine by a certain threshold given sufficient amount of data.


Electronics ◽  
2020 ◽  
Vol 9 (7) ◽  
pp. 1083 ◽  
Author(s):  
Zakria ◽  
Jianhua Deng ◽  
Jingye Cai ◽  
Muhammad Umar Aftab ◽  
Muhammad Saddam Khokhar ◽  
...  

Vehicle re-identification (Re-Id) is the key module in an intelligent transportation system (ITS). Due to its versatile applicability in metropolitan cities, this task has received increasing attention these days. It aims to identify whether the specific vehicle has already appeared over the surveillance network or not. Mostly, the vehicle Re-Id method are evaluated on a single dataset, in which training and testing of the model is performed on the same dataset. However in practice, this negatively effects model generalization ability due to biased datasets along with the significant difference between training and testing data; hence, the model becomes weak in a practical environment. To demonstrate this issue, we have empirically shown that the current vehicle Re-Id datasets are usually strongly biased. In this regard, we also conduct an extensive study on the cross and the same dataset to examine the impact on the performance of the vehicle Re-Id system, considering existing methods. To address the problem, in this paper, we have proposed an approach with augmentation of the training dataset to reduce the influence of pose, angle, camera color response, and background information in vehicle images; whereas, spatio-temporal patterns of unlabelled target datasets are learned by transferring siamese neural network classifiers trained on a source-labelled dataset. We finally calculate the composite similarity score of spatio-temporal patterns with siamese neural-network-based classifier visual features. Extensive experiments on multiple datasets are examined and results suggest that the proposed approach has the ability to generalize adequately.


Author(s):  
Zhao Long ◽  
Gao Bo ◽  
Zheng Guoqiang ◽  
Wang Xin ◽  
Qiu Rujia ◽  
...  

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