Privacy-Preserved Social Distancing System Using Low-Resolution Thermal Sensors and Deep Learning

Author(s):  
Aisha Fahad Alraeesi ◽  
Hanan Fekri Kharbash ◽  
Jawaher Saif Alghfeli ◽  
Shamma Sultan Alsaedi ◽  
Munkhjargal Gochoo
Author(s):  
Irfan Yaqoob ◽  
Muhammad Umair Hassan ◽  
Dongmei Niu ◽  
Muhammad Maaz Irfan ◽  
Numan Zafar ◽  
...  

Author(s):  
Mr. Kiran Mudaraddi

The paper presents a deep learning-based methodology for detecting social distancing in order to assess the distance between people in order to mitigate the impact of the coronavirus pandemic. The input was a video frame from the camera, and the open-source object detection was pre-trained. The outcome demonstrates that the suggested method is capable of determining the social distancing measures between many participants in a video.


2021 ◽  
Author(s):  
Abhishek Mukhopadhyay ◽  
G S Rajshekar Reddy ◽  
Subhankar Ghosh ◽  
Murthy L R D ◽  
Pradipta Biswas

2021 ◽  
Author(s):  
Huan Zhang ◽  
Zhao Zhang ◽  
Haijun Zhang ◽  
Yi Yang ◽  
Shuicheng Yan ◽  
...  

<div>Deep learning based image inpainting methods have improved the performance greatly due to powerful representation ability of deep learning. However, current deep inpainting methods still tend to produce unreasonable structure and blurry texture, implying that image inpainting is still a challenging topic due to the ill-posed property of the task. To address these issues, we propose a novel deep multi-resolution learning-based progressive image inpainting method, termed MR-InpaintNet, which takes the damaged images of different resolutions as input and then fuses the multi-resolution features for repairing the damaged images. The idea is motivated by the fact that images of different resolutions can provide different levels of feature information. Specifically, the low-resolution image provides strong semantic information and the high-resolution image offers detailed texture information. The middle-resolution image can be used to reduce the gap between low-resolution and high-resolution images, which can further refine the inpainting result. To fuse and improve the multi-resolution features, a novel multi-resolution feature learning (MRFL) process is designed, which is consisted of a multi-resolution feature fusion (MRFF) module, an adaptive feature enhancement (AFE) module and a memory enhanced mechanism (MEM) module for information preservation. Then, the refined multi-resolution features contain both rich semantic information and detailed texture information from multiple resolutions. We further handle the refined multiresolution features by the decoder to obtain the recovered image. Extensive experiments on the Paris Street View, Places2 and CelebA-HQ datasets demonstrate that our proposed MRInpaintNet can effectively recover the textures and structures, and performs favorably against state-of-the-art methods.</div>


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