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

Agent Based Approach for Discovery of Cloud Services

Cloud computing is considered as important aspect for assessing various services. There are many cloud service providers that makes provision of different services and consumers that acquire these services by mentioning...

Verilog HDL using LTE Implementation MAP Algorithm

In many communication systems, turbo coding Techniques for Encoding and Decoding are employed to repair errors. As compared to other error correction codes, turbo codes provide great error correcting capabilities. For th...

Women and Biotechnology's Pledges: Colonial Legacy and Postcolonial Biologics

Feminist science and technology studies have influenced our developing knowledge of sex, gender, and biotechnology for three decades. We tend to think of sex and gender in binary terms, which significantly limits our und...

Deep Learning Approach to Classify Brain Tumor with Comparative Analysis of CT and MRI Scans

Brain tumor is an intracranial growth or collection of aberrant cells. While brain tumors can afflict anyone at any age, they most typically affect youngsters and the elderly. The aberrant tissue cells in brain tumors ar...

A Systematic Review of Challenges in Fog Computing

The number of Internet of Things (IoT) applications is rapidly increasing. Current cloud-centric IoT designs, on the other hand, are unable to meet the mobility and dormancy necessities of duration precarious IoT practic...

Download PDF file
  • EP ID EP744975
  • DOI 10.55524/ijircst.2024.12.3.12
  • Views 55
  • 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