Green check
Link copied to clipboard

YOLOv5 Just Got Stronger in v6.1!

Explore YOLOv5 v6.1 by Ultralytics for cutting-edge enhancements in vision AI, featuring TensorRT, TensorFlow Edge TPU support, and more.

YOLOv5 v6.1 release

As pioneers in the realm of computer vision and machine learning, Ultralytics is excited to announce the latest developments in our flagship YOLO (You Only Look Once) technology. With the YOLOv5 v6.1 release, we've fine-tuned our architecture to enhance simplicity, speed, and strength, ensuring that our technology remains at the forefront of innovation. Our last release in October 2021 laid the groundwork for these advancements, and now we're proud to present these crucial updates that redefine YOLO's usability and performance.

Important Updates

Continuing our relentless pursuit of excellence in Vision AI, these are the ground-breaking enhancements that you'll find in YOLOv5 v6.1:

  • TensorRT support: Improved integration for TensorFlow, Keras, TFLite, and TF.js model exports using python export.py --include saved_model pb tflite tfjs (#5699 by @imyhxy). This is a significant milestone as NVIDIA's TensorRT is a high-performance deep learning inference optimizer and runtime that delivers low-latency, high-throughput for deep learning applications.
  • TensorFlow Edge TPU support ⭐ NEW: Introducing the new smaller YOLOv5n (1.9M params) model that stands below YOLOv5s (7.5M params) in complexity, yet shines in its ability to export to a mere 2.1 MB INT8 size. This is particularly ideal for ultralight mobile solutions, bringing powerful machine learning to the very edge of technology (#3630 by @zldrobit).
  • OpenVINO support: YOLOv5 ONNX models are now compWith OpenVINO, models can now harness the full power of Intel CPUs and integrated GPUs for a versatile array of applications (#6057 by @glenn-jocher).
  • Export Benchmarks: We have introduced a new benchmarking tool to assess mAP (Mean Average Precision) and speed across all YOLOv5 export formats with python utils/benchmarks.py --weights yolov5s.pt. Currently operating on CPUs, we plan to extend this to include GPU benchmarks in future updates (#6613 by @glenn-jocher).
  • Hyperparameters: There has been a minor yet crucial adjustment to our hyperparameters - in hyp-scratch-large.yaml the learning rate factor (lrf) has been reduced from 0.2 to 0.1 (#6525 by @glenn-jocher).
  • Training: The default Learning Rate (LR) scheduler has been updated to one-cycle linear, replacing the previous one-cycle with cosine, for improved training results (#6729 by @glenn-jocher).
YOLOv5 v6.1 features

Unveiling the full spectrum of our support across different formats, YOLOv5 now officially works with 11 formats, supporting not just export but also inference with detect.py and PyTorch Hub, and validation to profile mAP and speed:

  • ✅ PyTorch
  • ✅ TorchScript
  • ✅ ONNX
  • ✅ OpenVINO
  • ✅ TensorRT
  • ✅ CoreML
  • ✅ TensorFlow SavedModel
  • ✅ TensorFlow GraphDef
  • ✅ TensorFlow Lite
  • ✅ TensorFlow Edge TPU
  • ✅ TensorFlow.js

Together for Everyone's AI

At Ultralytics, we are driven not merely by the desire to lead but by the passion to participate and contribute to the community. The YOLOv5 family has been instrumental in our journey, supporting us through triumphs and challenges alike. This update is a collective triumph, representing the hard work of 271 PRs from 48 new contributors. We stand committed to our mission of democratizing AI, making it accessible and operational for everyone.

Join the Vision AI Revolution

We are continually looking for talent to join our ranks and invite collaborations on our open-source projects. If you're interested in becoming a part of the most groundbreaking AI team, explore our careers page or consider contributing to YOLOv5.

From AI Enthusiasts to the Most Popular Object Detection of 2022

This year, our Ultralytics/YOLOv5 repository has achieved a significant milestone by surpassing Joseph Redmon's pjreddie/darknet YOLOv3 in the total number of GitHub stars, now boasting over 22.4k stars. This is a testament to the trust and enthusiasm of the community, and it motivates us to keep pushing the boundaries of Vision AI. We are deeply honored to carry forward the You Only Look Once legacy.

Visit our YOLOv5 GitHub repository for comprehensive details about the new release and join the vibrant community of YOLO object detection enthusiasts.

Experience the Magic of YOLO With No Code

But there's more! If you're new to Computer Vision or simply prefer a no-code experience, Ultralytics HUB is your gateway. Discover how to harness YOLO and Computer Vision technology with a few effortless clicks. Learn more by visiting Ultralytics HUB - Your Doorway to AI and embark on your journey in Computer Vision.

Facebook logoTwitter logoLinkedIn logoCopy-link symbol

Read more in this category

Let’s build the future
of AI together!

Begin your journey with the future of machine learning