Litcius/Paper detail

Object Detection using YOLO: A Survey

Abhinandan Tripathi, Manish Kumar Gupta, Chaynika Srivastava, Pallavi Dixit, Shrawan Kumar Pandey

202227 citationsDOI

Abstract

In recent years, object detection is becoming very popular field in computer vision developments. Object detection has many applications viz. vehicle detection, pedestrian detection, blood cell counting etc. Various studies have been conducted in order to improve object detecting accuracy and speed. The latest technique is You Only Look Once object detection. It is state-of-the-art detection technique and considered as a regression problem. YOLO has the ability to predict various objects present in an image in a single run. This paper presents a survey of various detections based on YOLO which aims to improve the accuracy of existing system. This paper presents various modifications done on basic YOLO method and shows their analysis.

Topics & Concepts

Object detectionComputer scienceComputer visionArtificial intelligenceObject-class detectionObject (grammar)Pedestrian detectionViola–Jones object detection frameworkField (mathematics)Feature extractionPattern recognition (psychology)PedestrianFace detectionEngineeringMathematicsFacial recognition systemTransport engineeringPure mathematicsAdvanced Neural Network ApplicationsVehicle License Plate RecognitionVideo Surveillance and Tracking Methods