19 research outputs found

    COVID19 Model Based Projection Visualizer

    No full text
    Modifications done by the CASUS team to the visualization website for MATSim/EpiSim software, originally developed by TU Berlin at https://github.com/matsim-vsp/covid-sim, as used on the Where2Test website https://www.where2test.de/covidsim. Snapshot of the version used on the Where2Test website as of the project end by 26.06.2023 published here to fulfill the obligations of the AGPL license

    Data publication: Impact of intervention on the spread of COVID-19 in India: A model based study

    No full text
    This contains a set of MATLAB scripts and data that were used to generate the figures and results in the manuscripts

    Data publication: Estimating cross-border mobility from the difference in peak-timing: A case study in Poland-Germany border regions

    No full text
    Codes for reproducing the results in the research article "Estimating cross-border mobility from the difference in peak-timing: A case study in Poland-Germany border regions

    Object Detection and Segmentation using LiDAR-Camera Fusion for Autonomous Vehicle

    No full text
    The Light detection and ranging (LiDAR) sensor plays a crucial role in perceiving the environment for an autonomous vehicle. But, in many scenarios LiDAR is unable to capture important information, for example, traffic light signals. This kind of scenario can be avoided by using camera images with LiDAR data. But, the system will not work effectively, if there is no proper calibration and synchronization between camera images and LiDAR data. In this paper, we have demonstrated a system, where objects are synchronously detected and segmented in both images and LiDAR data from KITTI datasets. Currently, the system is working in real-time using Robot Operating System (ROS) and can process up to 10 frames of image and point cloud data per second. © 2021 IEEE

    On the optimal presence strategies for workplace during pandemics: A COVID-19 inspired probabilistic model.

    No full text
    During pandemics like COVID-19, both the quality and quantity of services offered by businesses and organizations have been severely impacted. They often have applied a hybrid home office setup to overcome this problem, although in some situations, working from home lowers employee productivity. So, increasing the rate of presence in the office is frequently desired from the manager's standpoint. On the other hand, as the virus spreads through interpersonal contact, the risk of infection increases when workplace occupancy rises. Motivated by this trade-off, in this paper, we model this problem as a bi-objective optimization problem and propose a practical approach to find the trade-off solutions. We present a new probabilistic framework to compute the expected number of infected employees for a setting of the influential parameters, such as the incidence level in the neighborhood of the company, transmission rate of the virus, number of employees, rate of vaccination, testing frequency, and rate of contacts among the employees. The results show a wide range of trade-offs between the expected number of infections and productivity, for example, from 1 to 6 weekly infections in 100 employees and a productivity level of 65% to 85%. This depends on the configuration of influential parameters and the occupancy level. We implement the model and the algorithm and perform several experiments with different settings of the parameters. Moreover, we developed an online application based on the result in this paper which can be used as a recommender for the optimal rate of occupancy in companies/workplaces
    corecore