A Comprehensive Review of YOLOv5: Advances in Real-Time Object Detection

Abstract

YOLOv5 represents a significant advancement in the field of real-time object detection, building upon the YOLO (You Only Look Once) series' legacy. This paper provides a comprehensive review of YOLOv5, examining its architecture, innovations, performance benchmarks, and applications. We also compare YOLOv5 with previous YOLO versions and other state-of-the-art object detection models, highlighting its strengths and limitations. Through this review, we aim to offer insights into the evolution of YOLOv5 and its impact on the field of computer vision.

Authors and Affiliations

Sandeep Kumar Jaiswal and Rohit Agrawal

Keywords

Related Articles

A Review on Increasing Soil Carbon Storage: Mechanisms, Effects of Agricultural Practices and Proxies

The worldwide 4 per 1000 project seeks to assist governments and non-governmental organizations in their efforts to improve soil carbon (C) stock management. These stocks are depending on soil C emissions and inputs. The...

Kinematics Analysis of Taekwondo Kick with Visual Feedback

The purpose of this study was to evaluate kinematics of Taekwondo side kick when visual feedback was present or absence. A total of 10 collegiate Taekwondo Pumsae athletes (age: 21±2.558 yrs, height: 166.91±7.354 cm, wei...

A Strong Blind Signature Using Cascade Blind Factors

This paper presents a modified version of blind signature . The proposed method adds more complex blind factors to increase the blindeness property of the message sent . In order to achieve this goal , the proposed syste...

Kidney Tumour Detection Using Deep Neural Network

Classifying the malignancy of a renal tumour is one of the most important urological duties because it plays a key role in determining whether or not to undergo kidney removal surgery (nephrectomy). Currently, the radiol...

Design and Development of Open Source Based Interactive e-Waste Management System

e-Waste has become an issue of serious concern to environmentalists. e-Waste is a complex mixture of hazardous and non-hazardous waste, which consists of items of economic value. Therefore, it requires specialized segreg...

Download PDF file
  • EP ID EP744975
  • DOI 10.55524/ijircst.2024.12.3.12
  • Views 26
  • Downloads 0

How To Cite

Sandeep Kumar Jaiswal and Rohit Agrawal (2024). A Comprehensive Review of YOLOv5: Advances in Real-Time Object Detection. International Journal of Innovative Research in Computer Science and Technology, 12(3), -. https://europub.co.uk/articles/-A-744975