The goal of this project is to develop intelligent data-driven techniques, accurate labeled data is needed for training and evaluation of deep learning techniques. To better engage scientists in the labeling and to facilitate the labeling we will use AR/VR tools. This work seeks to build upon the previous efforts by creating an integrated tool suite for enhancing the value, situational awareness, accessibility, and understanding of science data connected with Arctic science using virtual reality (VR) and augmented reality (AR) technologies. This work will design, develop, and evaluate AR/VR tools to explore and annotate, using tablets/mobile devices, and HoloLens. The objective of the effort will be to use the AR displays on mobile devices and headsets to guide the users with virtual overlays, paths, and way-points. It will also involve development of algorithms for layering, situational awareness, and location sensing.
We have incorporated a use case of a parking lot to develop and test our tool. Understanding anomalous behavior and spatial changes in an urban parking area can enhance decision-making and situational awareness insights for sustainable urban parking management. Decision-making relies on data that comes in overwhelming velocity and volume, that one cannot comprehend without some layer of analysis and visualization. This work presents a mobile application that performs time series analysis and anomaly detection on parking lot data for decision-making. The mobile application includes two modules: 1) Information gathering module and 2) Time series analysis module. In the information gathering module, users can add pins at the parking lot and in the time series analysis module, users can analyze the pins they added over a period. Our approach uses parking pins to identify each vehicle and then collect specific data, such as temporal variables like latitude, longitude, time, date, and text (information from the license plate), as well as images and videos shot at the location. Users have the option of placing pins at the location where their car is parked, and the information collected can be used for time series analysis. By examining the data pattern, we may quickly identify vehicles parked in restricted spaces but without authorization and vehicles parked in disabled spaces but owned by regular users. This time series analysis enables the extraction of meaningful insights, making it useful in the identification of recurring patterns in parking lot occupancy over time. This information aids in predicting future demands, enabling parking administrators to allocate resources efficiently during peak hours and optimize space usage. It can be used in detecting irregularities in parking patterns, aiding in the prompt identification of unauthorized or abnormal parking and parking violations which includes parking of the wrong type of vehicle, and parking at restricted or reserved areas.
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Videos (Time Series Analysis Module )
The proposed mobile application is developed using the Unity framework and seamlessly integrates image capture, note-taking, GPS tracking, and a robust SQLite database, offering users a comprehensive memory management system. This work focuses on performing time series analysis techniques for detecting anomalous behavior in urban parking lots.
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Mobile Application using Unity 3D for time series analysis for Geospatial data Visualization of Geospatial data in MetaQuest 3
The goal of this project is to develop a point cloud data visualization in VR or AR using Cesium, Unity 3D, and MetaQuest by incorporating labeling and annotation.
Bhoj Raj Bhatt and Sharad Sharma “Mobile App for Object Tracking and Location-Based Data for Time Series Analysis”, special celebration for the 15th anniversary event, College of Information (COI) at the University of North Texas, November 10, 2023. (1st Place Award).
Sri Chandra Dronavalli, and Sharad Sharma “Crime Data Analysis and Visualization through HoloLens 2 and Oculus Quest Pro”, special celebration for the 15th anniversary event, College of Information (COI) at the University of North Texas, November 10, 2023. (2nd Place Award)
Maruthi Prasanna and Sharad Sharma, “Mobile Application for Identifying Anomalous Behavior and Conducting Time Series Analysis using Parking Lot Data”, special celebration for the 15th anniversary event, College of Information (COI) at the University of North Texas, November 10, 2023.
Suruthi Selvam and Sharad Sharma, “Real Time Object Detection and Emotion Detection via Camera using React Native, Python Flask, Coco Dataset and OpenCV”, special celebration for the 15th anniversary event, College of Information (COI) at the University of North Texas, November 10, 2023.