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Research-Internships-for-UG-Students
A comprehensive list of research opportunities for undergraduate studentsEdge-Detection---Image-Processing
Edge detection methods for finding object boundaries in images Edge detection is an image processing technique for finding the boundaries of objects within images. It works by detecting discontinuities in brightness. Edge detection is used for image segmentation and data extraction in areas such as image processing, computer vision, and machine vision. Common edge detection algorithms include Sobel, Canny, Prewitt, Roberts, and fuzzy logic methods.Video-to-frames
Basic requirements for video analytics -- frame separation, frame rate, frame resize, Average of the framesMovie-Lenghts-Case-Study
Program-GUI
GUI of a software prototype with latest features developed to aid surveillance systems' monitoring.Interactive-Login-Page
Used - HTML, CSS, JSBilateral-Filtering
A bilateral filter is a non-linear, edge-preserving, and noise-reducing smoothing filter for images. It replaces the intensity of each pixel with a weighted average of intensity values from nearby pixels. This weight can be based on a Gaussian distribution. Crucially, the weights depend not only on Euclidean distance of pixels, but also on the radiometric differences (e.g., range differences, such as color intensity, depth distance, etc.). This preserves sharp edges.Telecome-Consumer-Complaints-Data-Analytics-PYTHON
Data Dictionary Ticket #: Ticket number assigned to each complaint Customer Complaint: Description of complaint Date: Date of complaint Time: Time of complaint Received Via: Mode of communication of the complaint City: Customer city State: Customer state Zipcode: Customer zip Status: Status of complaint Filing on behalf of someone Analysis Task To perform these tasks, you can use any of the different Python libraries such as NumPy, SciPy, Pandas, scikit-learn, matplotlib, and BeautifulSoup. - Import data into Python environment. - Provide the trend chart for the number of complaints at monthly and daily granularity levels. - Provide a table with the frequency of complaint types. Which complaint types are maximum i.e., around internet, network issues, or across any other domains. - Create a new categorical variable with value as Open and Closed. Open & Pending is to be categorized as Open and Closed & Solved is to be categorized as Closed. - Provide state wise status of complaints in a stacked bar chart. Use the categorized variable from Q3. Provide insights on: Which state has the maximum complaints Which state has the highest percentage of unresolved complaints - Provide the percentage of complaints resolved till date, which were received through the Internet and customer care calls.Love Open Source and this site? Check out how you can help us