yeldarb 7 hours ago

It’s a big improvement if you’re already paying them but, given their aggressive approach to licensing, I can’t imagine why anyone would choose to use an Ultralytics model on a new project in 2026. You’re just asking to be shaken down and have to pay off a large bill down the line.

RF-DETR is both faster and more accurate and truly open source with an Apache 2.0 license: https://github.com/roboflow/rf-detr

Full disclosure: I’m one of the co-founders of Roboflow (we made RF-DETR, wrote this blog post, and are a sub-licensor of Ultralytics’ models.)

  • MrGLaDOS 6 hours ago

    “RF-DETR is both faster and more accurate and truly open source with an Apache 2.0 license”

    Misleading marketing statement.

    The catch is that for image resolutions >=700x700pixels (most production usecases), the roboflow license is actually PML1.0 instead of Apache2.0 https://github.com/roboflow/rf-detr#license

    • krapht 5 hours ago

      > The catch is that for image resolutions >=700x700pixels (most production usecases)

      Citation needed? 2XL looks like you go up to 800x800 pixel inputs. This isn't the dealbreaker you say it is - all pipelines benefit from thoughtful crop and rescaling before going to inference.

      • MrGLaDOS 4 hours ago

        See the url in my comment (search for the term rfdetr-2xlarge). 2XL does indeed go up to 800x800 and has PML1.0 license instead of apache 2.0.

        Rescaling is fine for some purposes but but not for all. For many domain-specific (often less common and odd dimensioned) objects, downscaling will severely reduce recall. There is a reason that Roboflow slaps a license that is not open source on those specific architectures.

        In some cases tiled inferencing (for example with https://github.com/obss/sahi ) might do the job.

esquire_900 14 hours ago

We've been running YOLO for a number of years (since v5) on soccer videos. None of the recent iterations have been significantly better, with v26 scoring worse then v9 and v11 on our tasks. Makes me wonder why this version is being pushed by roboflow and ultralytics.

  • teruakohatu 13 hours ago

    When I was working with YOLO models it did seem like there was little practical improvements were between all of the spinoff models. It seemed people were pushing new models for personal recognition since the original creator stopped working on it.

    That said, many of the claimed improvements in this model were are efficiency related.

  • yfontana 11 hours ago

    Can't speak for 26, but a year ago I worked on a project that migrated from v5 to 11 because of improved image segmentation capabilities. My understanding is that the newer versions don't necessarily have better precision/recall, but they tend to be faster for equivalent results, and have increased capabilities.

  • GL26 11 hours ago

    What I find cool is not the model in itself, but the architectures / training methods found that make the model better. It gives out a new possibilites for other fields of AI. (Notably if you want to fine tune other CV models)

  • Onavo 13 hours ago

    The original YOLO author has long quit due to ethical reasons.

    • utopiah 13 hours ago

      Despite having a very memorable paper on the topic I believe they now work at Ai2.

deviation 7 hours ago

My buddy has some vision impairments, and I remember training a much older of YOLO's models to detect objects/enemies in Terraria for him. It worked very well.

I then tried trained it on a lot of sample images from a 3D point & shoot game, and was quite disappointed in how it performed.

Has anyone else experimented with it recently? How does this suit as a base-model for training custom classifiers? And with hardware growth in the last ~5 years, is it suitable to run in parallel with games which are graphically intensive?

geuis 12 hours ago

Was evaluating YOLO26 within the last month for its on-device (iPhone 16 Pro) segmentation capabilities. Its decent, but its biggest limitation is that its only trained on 80 COCO classes (meaning pre-labeled images). If whatever is in your images isn't in the 80 classes, its invisible to YOLO26. Conversely I have SAM2 running on-device and its my current workhorse. The biggest benefit with SAM2 for me is that it does fine-grained segmentation masks but isn't trained on labeled images. This was a specific requirement for the app I'm building. SAM2 isn't anywhere as speedy as the native Vision framework apis, but it is more capable across a vastly wider array of potential image targets.

  • larodi 12 hours ago

    I would prefer GroundingDINo which is a sort of SAM and Dino combo which does open vocabulary.

    • geuis 9 hours ago

      Doesn't work for my use-case. GroundingDINO is a text to bounding box model. SAM2 supports coordinate based masks (user taps or clicks somewhere in an image), which is what my research app needs.

speedgoose 13 hours ago

I found that while CLIPSeg is slower than YOLOn, it is still pretty fast and if gave me much much better results without training.

If you want to detect objects and speed is important so you can’t use a LLM architecture, you can give it a try too.

yurimo 13 hours ago

Wow I'm old, I still remember working with YOLOv2.

larodi 12 hours ago

One thing I don’t get I why the article is credited to ‘Contributing Author’.

Meanwhile their very own Peter Skalski already does super job with host write ups and examples of all YOLO sorts and is well respected.

alex_duf 9 hours ago

I'm sure the model is capable, but I find it funny that the sample image that contains three bears gets detected as two elephants.

  • speedgoose 7 hours ago

    It’s an accurate representation of the model capabilities in my experience.

m00dy 13 hours ago

Ive used YOLO26 in one of my projects, It was very easy to train on our custom dataset and also very easy to deploy even on rust with AVX2 support. This model is indeed fast and can be used for almost real time inference.

steinvakt2 10 hours ago

Just a reminder that RF-DETR is better than yolo26

maelito 9 hours ago

Can it measure the speed of a car on a video ?

  • MaxikCZ 9 hours ago

    Same question, same answer: In pixels/second? Sure!

    What are you trying to accomplish by those questions? Are you genuinely asking, or just baiting? If the former, didnt answers to your previous question make it clear that your question makes less sense than you might assume?

  • Joel_Mckay 5 hours ago

    Global-shutter cameras are fast and expensive, while Doppler radar modules are robust and under $30 these days.

    Running machine-vision outside in the Sun or Weather can get tricky. There is also a limited supply of BS a firm can shovel before some bystander ends up dead. =3

    https://www.bbc.co.uk/news/articles/c07yp02mxyjo