DCSCN Super Resolution model in pytorch
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Updated
Mar 24, 2023 - Python
DCSCN Super Resolution model in pytorch
Video Pedestrian Event Detection. Given a video and an event to be detected, identify, detect and track the people in the video, and make corresponding event judgments, such as smoking, helmets, gender, etc. 视频行人事件检测。给定一段视频和一个待检测事件,对视频中的人进行识别、检测和跟踪,并做出相应的事件判断,如吸烟、戴头盔、性别等。
This repository contains the codebase for an advanced video analysis pipeline that combines multiple state-of-the-art models and methodologies for high-accuracy activity recognition. The pipeline utilizes models and methodologies such as YOLO V8, ByteTrack, Movenet, and Transformer encoders.
Real-time edge AI tracking for physical RC car bowling. Features a zero-allocation Android pipeline, Alpha-Beta-Gamma kinematic filtering, and YOLO26n inference on budget hardware.
Public shell for a spatial memory benchmark from egocentric video. Documentation-only: protocol, schema, and data card—no code or datasets.
AI-powered Android educational application for Odontogenic Oral Pathology using Java, Firebase, Google Gemini API, quiz generation, chatbot, AR/3D learning, and student performance analytics.
✨ My GitHub profile README — Meet Maru · AI & ML Engineer from Mumbai, India. Building production ML systems, AI agents & full-stack web apps. SIH participant · VP @ CSI VIVA · Open to internships.
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