π· Ultralytics YOLO11!π
Developed by Jing Qiu and Glenn Jocher, YOLO11 represents a major leap forward in object detection technology, reflecting months of dedicated research and development by the Ultralytics team.
β YOLO11 Key Features:
- Enhanced architecture for high-precision detection and complex vision tasks
- Faster inference speeds with balanced accuracy
- Higher precision while using 22% fewer parameters
- Seamlessly deployable across edge devices, cloud, and GPU systems
- Full support for:
πΉ Object Detection
πΉ Segmentation
πΉ Classification
πΉ Pose Estimation
πΉ Oriented Bounding Boxes (OBB)
---
β‘ Quick Start
Run inference instantly with:
yolo predict model="yolo11n.pt"
---
π Learn more and explore the documentation here:
π https://ow.ly/mKOC50Tyyok
π By : https://t.iss.one/DataScienceN
Developed by Jing Qiu and Glenn Jocher, YOLO11 represents a major leap forward in object detection technology, reflecting months of dedicated research and development by the Ultralytics team.
β YOLO11 Key Features:
- Enhanced architecture for high-precision detection and complex vision tasks
- Faster inference speeds with balanced accuracy
- Higher precision while using 22% fewer parameters
- Seamlessly deployable across edge devices, cloud, and GPU systems
- Full support for:
πΉ Object Detection
πΉ Segmentation
πΉ Classification
πΉ Pose Estimation
πΉ Oriented Bounding Boxes (OBB)
---
β‘ Quick Start
Run inference instantly with:
yolo predict model="yolo11n.pt"
---
π Learn more and explore the documentation here:
π https://ow.ly/mKOC50Tyyok
π By : https://t.iss.one/DataScienceN
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With Ultralytics Solutions, you can effortlessly detect, track, and count strawberries with precision.
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Forget Coding; start Vibing! Tell AI what you want, and watch it build your dream website while you enjoy a cup of coffee.
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π¦ Traffic Lights Detection using Ultralytics YOLO11! π§ π€
Ultralytics YOLOv11 can be used for real-time detection of π« red, β οΈ yellow, and β green traffic lights β boosting road safety, traffic management, and autonomous navigation π£οΈπ
π Unlock new possibilities in:
π Smart city planning ποΈ
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π Computer vision-powered transportation systems
π Get started now β‘οΈ https://ow.ly/XQyG50VgcR3
π‘ By: https://t.iss.one/DataScienceN
Ultralytics YOLOv11 can be used for real-time detection of π« red, β οΈ yellow, and β green traffic lights β boosting road safety, traffic management, and autonomous navigation π£οΈπ
π Unlock new possibilities in:
π Smart city planning ποΈ
π¦ Adaptive traffic control
π Computer vision-powered transportation systems
π Get started now β‘οΈ https://ow.ly/XQyG50VgcR3
π‘ By: https://t.iss.one/DataScienceN
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Python | Machine Learning | Coding | R
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π₯ SAMWISE: Infusing Wisdom in SAM2 for Text-Driven Video Segmentation, has been accepted at hashtag#CVPR2025! π
make #SegmentAnything wiser by enabling it to understand text promptsβall with just 4.9M additional trainable parameters.
make #SegmentAnything wiser by enabling it to understand text promptsβall with just 4.9M additional trainable parameters.
π3
ππ‘ What makes SAMWISE special?
πΉ Textual & Temporal Adapter for #SAM2 β We introduce a novel adapter that enables early fusion of text and visual features, allowing SAM2 to understand textual queries while modeling temporal evolution across frames.
πΉ Tracking Bias Correction β SAM2 tends to keep tracking an object even when a better match for the text query appears. Our learnable correction mechanism dynamically adjusts its focus, ensuring it tracks the most relevant object at every moment.
β¨ State-of-the-art performance across multiple benchmarks:
β New SOTA on Referring Video Object Segmentation (RVOS)
β New SOTA on image-level Referring Segmentation (RIS)β Runs online
β Requires no fine-tuning of SAM2 weights
π SAMWISE is the first text-driven segmentation approach built on SAM2 that achieves SOTA while staying lightweight and online.
π Project page: https://lnkd.in/dtBHBVbG
π» Code and models: https://lnkd.in/d-fadFGd
π Paper: arxiv.org/abs/2411.17646
π‘ By: https://t.iss.one/DataScienceN
πΉ Textual & Temporal Adapter for #SAM2 β We introduce a novel adapter that enables early fusion of text and visual features, allowing SAM2 to understand textual queries while modeling temporal evolution across frames.
πΉ Tracking Bias Correction β SAM2 tends to keep tracking an object even when a better match for the text query appears. Our learnable correction mechanism dynamically adjusts its focus, ensuring it tracks the most relevant object at every moment.
β¨ State-of-the-art performance across multiple benchmarks:
β New SOTA on Referring Video Object Segmentation (RVOS)
β New SOTA on image-level Referring Segmentation (RIS)β Runs online
β Requires no fine-tuning of SAM2 weights
π SAMWISE is the first text-driven segmentation approach built on SAM2 that achieves SOTA while staying lightweight and online.
π Project page: https://lnkd.in/dtBHBVbG
π» Code and models: https://lnkd.in/d-fadFGd
π Paper: arxiv.org/abs/2411.17646
π‘ By: https://t.iss.one/DataScienceN
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Instance segmentation vs semantic segmentation using Ultralytics π₯
β
Semantic segmentation classifies each pixel into a category (e.g., "car," "horse"), but doesn't distinguish between different objects of the same class.
β
Instance segmentation goes further by identifying and separating individual objects within the same category (e.g., horse 1 vs. horse 2).
Each type has its strengths, semantic segmentation is more common in medical imaging due to its focus on pixel-wise classification without needing to distinguish individual object instances. Its simplicity and adaptability also make it widely applicable across industries.
π https://docs.ultralytics.com/guides/instance-segmentation-and-tracking/
π By: https://t.iss.one/DataScienceN
Each type has its strengths, semantic segmentation is more common in medical imaging due to its focus on pixel-wise classification without needing to distinguish individual object instances. Its simplicity and adaptability also make it widely applicable across industries.
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Ultralytics
Instance Segmentation with Object Tracking
Master instance segmentation and tracking with Ultralytics YOLO11. Learn techniques for precise object identification and tracking.
π2π₯2β€1
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π1
π―πππππππππ πππ
π²πππππππ πππ ππππππππ π¨ππππππππ β½οΈπ
π Highlighting the latest strides in football field analysis using computer vision, this post shares a single frame from our video that demonstrates how homography and keypoint detection combine to produce precise minimap overlays. π§ π―
π§© At the heart of this project lies the refinement of field keypoint extraction. Our experiments show a clear link between both the number and accuracy of detected keypoints and the overall quality of the minimap. πΊοΈ
π Enhanced keypoint precision leads to a more reliable homography transformation, resulting in a richer, more accurate tactical view. βοΈβ‘
π For this work, we leveraged the championship-winning keypoint detection model from the SoccerNet Calibration Challenge:
π Implementing and evaluating this stateβofβtheβart solution has deepened our appreciation for keypointβdriven approaches in sports analytics. πΉπ
π https://lnkd.in/em94QDFE
π‘ By: https://t.iss.one/DataScienceN
#ObjectDetection hashtag#DeepLearning hashtag#Detectron2 hashtag#ComputerVision hashtag#AI
hashtag#Football hashtag#SportsTech hashtag#MachineLearning hashtag#ComputerVision hashtag#AIinSports
hashtag#FutureOfFootball hashtag#SportsAnalytics
hashtag#TechInnovation hashtag#SportsAI hashtag#AIinFootball hashtag#AI hashtag#AIandSports hashtag#AIandSports
hashtag#FootballAnalytics hashtag#python hashtag#ai hashtag#yolo hashtag
π Highlighting the latest strides in football field analysis using computer vision, this post shares a single frame from our video that demonstrates how homography and keypoint detection combine to produce precise minimap overlays. π§ π―
π§© At the heart of this project lies the refinement of field keypoint extraction. Our experiments show a clear link between both the number and accuracy of detected keypoints and the overall quality of the minimap. πΊοΈ
π Enhanced keypoint precision leads to a more reliable homography transformation, resulting in a richer, more accurate tactical view. βοΈβ‘
π For this work, we leveraged the championship-winning keypoint detection model from the SoccerNet Calibration Challenge:
π Implementing and evaluating this stateβofβtheβart solution has deepened our appreciation for keypointβdriven approaches in sports analytics. πΉπ
π https://lnkd.in/em94QDFE
π‘ By: https://t.iss.one/DataScienceN
#ObjectDetection hashtag#DeepLearning hashtag#Detectron2 hashtag#ComputerVision hashtag#AI
hashtag#Football hashtag#SportsTech hashtag#MachineLearning hashtag#ComputerVision hashtag#AIinSports
hashtag#FutureOfFootball hashtag#SportsAnalytics
hashtag#TechInnovation hashtag#SportsAI hashtag#AIinFootball hashtag#AI hashtag#AIandSports hashtag#AIandSports
hashtag#FootballAnalytics hashtag#python hashtag#ai hashtag#yolo hashtag
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This channels is for Programmers, Coders, Software Engineers.
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Introducing CoMotion, a project that detects and tracks detailed 3D poses of multiple people using a single monocular camera stream. This system maintains temporally coherent predictions in crowded scenes filled with difficult poses and occlusions, enabling online tracking through frames with high accuracy.
π Key Features:
- Precise detection and tracking in crowded scenes
- Temporal coherence even with occlusions
- High accuracy in tracking multiple people over time
This project advances 3D human motion tracking by offering faster and more accurate tracking of multiple individuals compared to existing systems.
#AI #DeepLearning #3DTracking #ComputerVision #PoseEstimation
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π― Trackers Library is Officially Released! π
If you're working in computer vision and object tracking, this one's for you!
π‘ Trackers is a powerful open-source library with support for a wide range of detection models and tracking algorithms:
β Plug-and-play compatibility with detection models from:
Roboflow Inference, Hugging Face Transformers, Ultralytics, MMDetection, and more!
β Tracking algorithms supported:
SORT, DeepSORT, and advanced trackers like StrongSORT, BoTβSORT, ByteTrack, OCβSORT β with even more coming soon!
π§© Released under the permissive Apache 2.0 license β free for everyone to use and contribute.
π Huge thanks to Piotr Skalski for co-developing this library, and to Raif Olson and Onuralp SEZER for their outstanding contributions!
π Links:
π GitHub
π Docs
π Quick-start notebooks for SORT and DeepSORT are linked ππ»
https://www.linkedin.com/posts/skalskip92_trackers-library-is-out-plugandplay-activity-7321128111503253504-3U6-?utm_source=share&utm_medium=member_desktop&rcm=ACoAAEXwhVcBcv2n3wq8JzEai3TfWmKLRLTefYo
#ComputerVision #ObjectTracking #OpenSource #DeepLearning #AI
π‘ By: https://t.iss.one/DataScienceN
If you're working in computer vision and object tracking, this one's for you!
π‘ Trackers is a powerful open-source library with support for a wide range of detection models and tracking algorithms:
β Plug-and-play compatibility with detection models from:
Roboflow Inference, Hugging Face Transformers, Ultralytics, MMDetection, and more!
β Tracking algorithms supported:
SORT, DeepSORT, and advanced trackers like StrongSORT, BoTβSORT, ByteTrack, OCβSORT β with even more coming soon!
π§© Released under the permissive Apache 2.0 license β free for everyone to use and contribute.
π Huge thanks to Piotr Skalski for co-developing this library, and to Raif Olson and Onuralp SEZER for their outstanding contributions!
π Links:
π GitHub
π Docs
π Quick-start notebooks for SORT and DeepSORT are linked ππ»
https://www.linkedin.com/posts/skalskip92_trackers-library-is-out-plugandplay-activity-7321128111503253504-3U6-?utm_source=share&utm_medium=member_desktop&rcm=ACoAAEXwhVcBcv2n3wq8JzEai3TfWmKLRLTefYo
#ComputerVision #ObjectTracking #OpenSource #DeepLearning #AI
π‘ By: https://t.iss.one/DataScienceN
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Trackers Library is Out! | Piotr Skalski
Trackers Library is Out! π₯ π₯ π₯
- Plugβandβplay integration with detectors from Transformers, Inference, Ultralytics, PaddlePaddle, MMDetection, and more.
- Builtβin support for SORT and DeepSORT today, with StrongSORT, BoTβSORT, ByteTrack, OCβSORT, andβ¦
- Plugβandβplay integration with detectors from Transformers, Inference, Ultralytics, PaddlePaddle, MMDetection, and more.
- Builtβin support for SORT and DeepSORT today, with StrongSORT, BoTβSORT, ByteTrack, OCβSORT, andβ¦
π4β€1π₯1