Ecosyste.ms: Awesome
An open API service indexing awesome lists of open source software.
Awesome-Segment-Anything
This repository is for the first comprehensive survey on Meta AI's Segment Anything Model (SAM).
https://github.com/liliu-avril/Awesome-Segment-Anything
Last synced: 5 days ago
JSON representation
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Paper List
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Follow-up Papers
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Survey
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:fire: Highlights
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Open Source Projects
-
Follow-up Papers
- Hugging Face - anything-video) | - | Packaged version of the SAM. |
- Project page - DKFZ/napari-sam) | Applied Computer Vision Lab and German Cancer Research Center | Extended SAM's click-based foreground separation to full click-based semantic segmentation and instance segmentation. |
- Code - | SAM for Medical Imaging.|
- Code - | SAM is extended to 3D perception by combining it with VoxelNeXt. |
- Code - | Anything 3DNovel View, Anything-NeRF, Any 3DFace. |
- Code
- Code - | Edit anything in images powered by SAM, ControlNet, StableDiffusion, \etc. |
- Code - | Using stable diffusion and SAM for image editing. |
- Code - | This extension aim for connecting AUTOMATIC1111 Stable Diffusion WebUI and Mikubill ControlNet Extension with SAM and GroundingDINO to enhance Stable Diffusion/ControlNet inpainting. |
- Colab - anything-eo) | - | An earth observation tools for SAM. |
- Code - | A project about SAM + Moving Object Detection.|
- Project page - SAM) | - | Combining MMOCR with SAM and Stable Diffusion. |
- Code - | A project uses the SAM Model and adds a barebones interface to label images and saves the masks in the COCO format. |
- Code - | An implementation of zero-shot instance segmentation using SAM. |
- Code - | A project uses SAM for generating rotated bounding boxes with MMRotate, which is a comparison method of H2RBox-v2. |
- Code - | Combining SAM with MOT, it create the era of "MOTS". |
- Hugging Face - Park/segment-anything-with-clip) | - | SAM combined with CLIP. |
- Code - | The tools are developed to ease the processing of spatial data (GeoTIFF and TMS) with SAM using sliding window algorithm for big files. |
- Project page - segment-anything) | - | SAM native Qt UI. |
- Code - | Using CLIP and SAM to segment any instance you specify with text prompt of any instance names. |
- Colab - | Simple static web-based mask drawer, supporting semantic segmentation with SAM. |
- Hugging Face - Anything) | SUSTech | Track-Anything is a flexible and interactive tool for video object tracking and segmentation. |
- Code - | A method uses SAM and CLIP to ground and count any object that matches a custom text prompt, without requiring any point or box annotation. |
- Hugging Face
- Project page - Any-RGBD) | - | Segment AnyRGBD is a toolbox to segment rendered depth images based on SAM. |
- Hugging Face
- Code - lab, NUS | An interactive demo based on Segment-Anything for style transfer which enables different content regions apply different styles. |
- Colab - Anything) | VIP lab, SUSTech | Caption-Anything is a versatile image processing tool that combines the capabilities of SAM, Visual Captioning, and ChatGPT. |
- Project page - | Transform Image into Unique Paragraph with ChatGPT, BLIP2, OFA, GRIT, Segment Anything, ControlNet. |
- Colab - work/LIME-SAM) | - | LIME-SAM aims to create an Explainable Artificial Intelligence (XAI) framework for image classification using LIME (Local Interpretable Model-agnostic Explanations) as the base algorithm, with the super-pixel method replaced by SAM. |
- Code - | An interactive demo based on SAM for stroke-based painting which enables human-like painting. |
- Colab - scale image segmentation model, SAM, to explore the new research paradigm of customizing large-scale models for medical image segmentation. |
- Code - | Expediting SAM without Fine-tuning. |
- Colab - x-yang/Segment-and-Track-Anything) | Zhejiang University | A project dedicated to tracking and segmenting any objects in videos, either automatically or interactively. |
- Colab - Research/Grounded-Segment-Anything) | IDEA-Research | A project by combining Grounding DINO and SAM which aims to detect and segment Anything with text inputs. |
- Code - Set Object Detection, Open-Vocabulary Object Detection, Grounding Object Detection. |
- Code
- Code
- Code
- Code - Studio and SAM to achieve semi-automated annotation. |
- Code
- Hugging Face - Vision | SAM In Context based on Painter. |
- Hugging Face - Decoder/Segment-Everything-Everywhere-All-At-Once) | Microsoft | A project can Segment Everything Everywhere with Multi-modal prompts all at once. |
- Project page - lab/CLIP_Surgery) | HKUST | A work about SAM based on CLIP's explainability to achieve text to mask without manual points. |
- Code - |SAM +Camouflaged object detection (COD) task.|
- Hugging Face - Anything) | USTC and EIT | SAM combines Inpainting, which is able to remove the object smoothly. |
- Hugging Face - SAM) | - | SAM with specific concepts. |
- Code - | A step-by-step tutorial with a small dataset to help you quickly utilize SAM. |
- Colab - Any-Anomaly) | HUST | Grounding DINO + SAM to segment any anomaly. |
- Code
- Code - | Magic Copy is a Chrome extension that uses SAM to extract a foreground object from an image and copy it to the clipboard. |
- Project page - labs/segment-anything-fast) | Team PyTorch | A batched offline inference oriented version of segment-anything. |
- WeChat - AnyLabeling) | CVHub | A new interactive automatic labeling tool based on AnyLabeling.|
- WeChat - segment-anything/237-segment-anything.ipynb) | - | OpenVINO™ NNCF for segment anything encoder quantization acceleration.|
- WeChat - | - | Use SAM in YOLOv8. |
- Zhihu blog
- Code - | SAM with text prompts generates masks for specific objects in images. |
- Hugging Face - SAM) | MMLab, CUHK | A training-free Personalization approach for SAM, termed as PerSAM. Given only a single image with a reference mask, PerSAM can segment specific visual concepts. |
- Code - | Combining OwlViT with Segment Anything - Open-vocabulary Detection and Segmentation (Text-conditioned, and Image-conditioned). |
- Code - pipeline with GPT-4 and SAM. |
- Project page - Seminar/grounded-segment-any-parts) | HKU | Expand Segment Anything Model (SAM) to support text prompt input. The text prompt could be object-level(eg, dog) and part-level(eg, dog head). |
- Youtube page - | Effortless AI-assisted data labeling with AI support from Segment Anything and YOLO. |
- Project page - zvg/Semantic-Segment-Anything) | - | Automated dense category annotation engine that serves as the initial semantic labeling for the Segment Anything dataset (SA-1B). |
- Project page - assisted labeling for training computer vision models. |
- Code - Research | This is an experimental demo aims to combine ImageBind and SAM to generate mask with different modalities. |
- Project page - | Dynamic Detection and Segmentation with YOLOv9+SAM. |
- Project page - lab/MedSAM/tree/LiteMedSAM) | - | A lightweight version of MedSAM for fast training and inference. |
-
-
Awesome Repositories for SAM
Programming Languages
Categories
Sub Categories
Keywords
segment-anything
44
deep-learning
20
computer-vision
18
segment-anything-model
18
segmentation
17
sam
16
object-detection
9
foundation-models
8
pytorch
7
instance-segmentation
6
semantic-segmentation
6
clip
6
open-vocabulary
5
robotics
5
machine-learning
5
pose-estimation
5
medical-imaging
5
zero-shot-segmentation
4
video-object-segmentation
4
segment
4
stable-diffusion
4
multimodal
4
artificial-intelligence
4
zero-shot
4
cvpr2024
4
chatgpt
4
vision-language
4
vision-transformer
4
vision-language-model
4
remote-sensing
4
pre-training
3
video-generation
3
segment-anything-meta
3
video-editing
3
open-vocabulary-segmentation
3
dataset
3
llm
3
inpainting
3
transformer
3
image-restoration
3
image-segmentation
3
anomaly-detection
3
3d
3
awesome
3
vision-and-language
3
autonomous-driving
3
adapter
2
diffusion
2
nerf
2
large-language-models
2