Best AI tools for< Segmentation >
20 - AI tool Sites
![Gan.AI Screenshot](/screenshots/gan.ai.jpg)
Gan.AI
Gan.AI is an AI-powered platform that offers video personalization services, including AI avatars, text-to-speech, video dubbing, and more. It enables users to create personalized videos at scale without the need for a camera or crew. The platform caters to various industries such as real estate, healthcare, and consumer brands, providing solutions for businesses to engage with their audiences effectively through tailored video content. Gan.AI's advanced technology allows for hyper-personalized video campaigns, boosting user engagement and driving conversions.
![MapZot.AI Screenshot](/screenshots/mapzot.ai.jpg)
MapZot.AI
MapZot.AI is an advanced retail site selection and market analysis AI tool that leverages big data and unique algorithms to provide real-time insights for businesses. It monitors local and national chains, predicts their next locations with high confidence, and offers decision analytics to pinpoint the best real estate locations for various industries. With features like internal data utilization, store cannibalization models, and over 90% confidence in decision-making, MapZot.AI is a powerful platform for site selection and market planning.
![Supple.ai Screenshot](/screenshots/supple.ai.jpg)
Supple.ai
Supple.ai is an AI-powered content generation tool that helps users create high-quality written content quickly and efficiently. By leveraging advanced natural language processing algorithms, Supple.ai can generate articles, blog posts, product descriptions, and more in a matter of minutes. The tool is designed to assist content creators, marketers, and businesses in streamlining their content creation process and improving productivity.
![Spatial.ai Screenshot](/screenshots/www.spatial.ai.jpg)
Spatial.ai
Spatial.ai is a customer segmentation platform that helps businesses understand their customers' social, mobile, and web behaviors. This data can be used to create targeted marketing campaigns, make better location decisions, and develop predictive models. Spatial.ai's data is built directly from organic consumer behavior, which means richer insights and higher accuracy.
![Audiense Screenshot](/screenshots/audiense.com.jpg)
Audiense
Audiense is a leading provider of audience intelligence and social media marketing solutions. Our mission is to democratize audience insights and empower marketers with the data and tools they need to make better decisions. We offer a suite of products that provide deep insights into social media audiences, digital consumer behavior, and demand intelligence. With Audiense, you can understand your target audience, create more effective marketing campaigns, and measure the impact of your efforts.
![Mailvio Screenshot](/screenshots/mailvio.com.jpg)
Mailvio
Mailvio is an email marketing platform designed to help influencers and creators monetize their followers more effectively. It offers a range of features to help users automate their email marketing, including powerful segmentation, AI-powered email creation, and detailed analytics. Mailvio also provides a drag-and-drop editor, pre-designed email templates, and round-the-clock expert support.
![Roboflow Screenshot](/screenshots/roboflow.com.jpg)
Roboflow
Roboflow is a platform that provides tools for building and deploying computer vision models. It offers a range of features, including data annotation, model training, and deployment. Roboflow is used by over 250,000 engineers to create datasets, train models, and deploy to production.
![Landing AI Screenshot](/screenshots/landing.ai.jpg)
Landing AI
Landing AI is a computer vision platform and AI software company that provides a cloud-based platform for building and deploying computer vision applications. The platform includes a library of pre-trained models, a set of tools for data labeling and model training, and a deployment service that allows users to deploy their models to the cloud or edge devices. Landing AI's platform is used by a variety of industries, including automotive, electronics, food and beverage, medical devices, life sciences, agriculture, manufacturing, infrastructure, and pharma.
![Fibr AI Screenshot](/screenshots/fibr.ai.jpg)
Fibr AI
Fibr AI is a personalized landing page platform that uses AI to deliver ultra-personalized experiences for every ad, email, or audience. With Fibr, businesses can create relevant landing pages for every ad and deliver personalized experiences dynamically, without any coding or hassle. Fibr's key features include a WYSIWYG editor, dynamic web personalization, ad connect, bulk creation, audience building, AI personalizations at scale, A/B testing, reporting and analytics, and integrations with popular marketing platforms. Fibr's benefits include increased conversions, reduced customer acquisition costs, and improved ROI. Fibr is suitable for businesses of all sizes and industries, and is particularly beneficial for businesses with high customer acquisition costs or low conversion rates.
![OpenCV.ai Screenshot](/screenshots/opencv.ai.jpg)
OpenCV.ai
OpenCV.ai is a leading provider of computer vision software and services. The company's team of experts has extensive experience in developing optimized large-scale computer vision solutions. OpenCV.ai's expertise is helping businesses grow in a variety of industries, including medicine, manufacturing, and retail. The company's solutions are used by startups and Fortune 500 companies alike.
![JobtitlesAI Screenshot](/screenshots/jobtitlesai.com.jpg)
JobtitlesAI
JobtitlesAI is a machine-learning API that sorts job titles into two categories: field (sales, finance, I.T...) and position (executive, management, assistant...). It can be used in spreadsheets, Hubspot, or via API. JobtitlesAI is multilingual and GDPR compliant.
![OpenCV Screenshot](/screenshots/opencv.org.jpg)
OpenCV
OpenCV is the world's largest computer vision library. It's open source, contains over 2500 algorithms and is operated by the non-profit Open Source Vision Foundation.
![Clarifai Screenshot](/screenshots/www.clarifai.com.jpg)
Clarifai
Clarifai is a full-stack AI developer platform that provides a range of tools and services for building and deploying AI applications. The platform includes a variety of computer vision, natural language processing, and generative AI models, as well as tools for data preparation, model training, and model deployment. Clarifai is used by a variety of businesses and organizations, including Fortune 500 companies, startups, and government agencies.
![Clarifai Screenshot](/screenshots/clarifai.com.jpg)
Clarifai
Clarifai is a full-stack AI platform that provides developers and ML engineers with the fastest, production-grade deep learning platform. It offers a wide range of features, including data preparation, model building, model operationalization, and AI workflows. Clarifai is used by a variety of companies, including Fortune 500 companies and startups, to build AI applications in a variety of industries, including retail, manufacturing, and healthcare.
![CVAT Screenshot](/screenshots/cvat.ai.jpg)
CVAT
CVAT is an open-source data annotation platform that helps teams of any size annotate data for machine learning. It is used by companies big and small in a variety of industries, including healthcare, retail, and automotive. CVAT is known for its intuitive user interface, advanced features, and support for a wide range of data formats. It is also highly extensible, allowing users to add their own custom features and integrations.
![Datature Screenshot](/screenshots/datature.io.jpg)
Datature
Datature is an all-in-one platform for building and deploying computer vision models. It provides tools for data management, annotation, training, and deployment, making it easy to develop and implement computer vision solutions. Datature is used by a variety of industries, including healthcare, retail, manufacturing, and agriculture.
![Amperity Screenshot](/screenshots/datamagazine.co.uk.jpg)
Amperity
Amperity is a leading AI enterprise customer data platform (CDP) for consumer brands. It provides a data foundation prepared by AI, allowing anyone to become a data scientist with Generative AI. Amperity's AI-powered capabilities include Explore, Assist, Stitch, and Predict.
![OpenCV Screenshot](/screenshots/courses.opencv.org.jpg)
OpenCV
OpenCV is a library of programming functions mainly aimed at real-time computer vision. Originally developed by Intel, it was later supported by Willow Garage and is now maintained by Itseez. OpenCV is cross-platform and free for use under the open-source BSD license.
![Retention Science Screenshot](/screenshots/retentionscience.com.jpg)
Retention Science
Retention Science is an AI-driven email marketing automation platform designed for ecommerce businesses. The platform utilizes artificial intelligence to personalize email messages for every stage of the customer's lifecycle, eliminating guesswork, saving time, and boosting sales and retention rates. Retention Science's predictive ecommerce automation has helped clients increase email engagement rates by 60% and purchase rates by 45%. The platform offers intelligent lifecycle automation, optimized campaigns, flexibility in marketing flows, and the ability to combine SMS and email marketing for a cohesive multi-channel experience.
![AI in Finance Summit Screenshot](/screenshots/ny-ai-finance.re-work.co.jpg)
AI in Finance Summit
The AI in Finance Summit is a leading conference that brings together experts in artificial intelligence and finance to discuss the latest trends and developments in the field. The summit features a variety of speakers, including researchers, practitioners, and investors, who share their insights on how AI is being used to transform the financial industry. The summit also provides a platform for attendees to network and learn from each other.
20 - Open Source AI Tools
![Awesome-Segment-Anything Screenshot](/screenshots_githubs/liliu-avril-Awesome-Segment-Anything.jpg)
Awesome-Segment-Anything
Awesome-Segment-Anything is a powerful tool for segmenting and extracting information from various types of data. It provides a user-friendly interface to easily define segmentation rules and apply them to text, images, and other data formats. The tool supports both supervised and unsupervised segmentation methods, allowing users to customize the segmentation process based on their specific needs. With its versatile functionality and intuitive design, Awesome-Segment-Anything is ideal for data analysts, researchers, content creators, and anyone looking to efficiently extract valuable insights from complex datasets.
![SlicerTotalSegmentator Screenshot](/screenshots_githubs/lassoan-SlicerTotalSegmentator.jpg)
SlicerTotalSegmentator
TotalSegmentator is a 3D Slicer extension designed for fully automatic whole body CT segmentation using the 'TotalSegmentator' AI model. The computation time is less than one minute, making it efficient for research purposes. Users can set up GPU acceleration for faster segmentation. The tool provides a user-friendly interface for loading CT images, creating segmentations, and displaying results in 3D. Troubleshooting steps are available for common issues such as failed computation, GPU errors, and inaccurate segmentations. Contributions to the extension are welcome, following 3D Slicer contribution guidelines.
![cellseg_models.pytorch Screenshot](/screenshots_githubs/okunator-cellseg_models.pytorch.jpg)
cellseg_models.pytorch
cellseg-models.pytorch is a Python library built upon PyTorch for 2D cell/nuclei instance segmentation models. It provides multi-task encoder-decoder architectures and post-processing methods for segmenting cell/nuclei instances. The library offers high-level API to define segmentation models, open-source datasets for training, flexibility to modify model components, sliding window inference, multi-GPU inference, benchmarking utilities, regularization techniques, and example notebooks for training and finetuning models with different backbones.
![MOOSE Screenshot](/screenshots_githubs/ENHANCE-PET-MOOSE.jpg)
MOOSE
MOOSE 2.0 is a leaner, meaner, and stronger tool for 3D medical image segmentation. It is built on the principles of data-centric AI and offers a wide range of segmentation models for both clinical and preclinical settings. MOOSE 2.0 is also versatile, allowing users to use it as a command-line tool for batch processing or as a library package for individual processing in Python projects. With its improved speed, accuracy, and flexibility, MOOSE 2.0 is the go-to tool for segmentation tasks.
![CVPR2024-Papers-with-Code-Demo Screenshot](/screenshots_githubs/DWCTOD-CVPR2024-Papers-with-Code-Demo.jpg)
CVPR2024-Papers-with-Code-Demo
This repository contains a collection of papers and code for the CVPR 2024 conference. The papers cover a wide range of topics in computer vision, including object detection, image segmentation, image generation, and video analysis. The code provides implementations of the algorithms described in the papers, making it easy for researchers and practitioners to reproduce the results and build upon the work of others. The repository is maintained by a team of researchers at the University of California, Berkeley.
![DeepLearing-Interview-Awesome-2024 Screenshot](/screenshots_githubs/315386775-DeepLearing-Interview-Awesome-2024.jpg)
DeepLearing-Interview-Awesome-2024
DeepLearning-Interview-Awesome-2024 is a repository that covers various topics related to deep learning, computer vision, big models (LLMs), autonomous driving, smart healthcare, and more. It provides a collection of interview questions with detailed explanations sourced from recent academic papers and industry developments. The repository is aimed at assisting individuals in academic research, work innovation, and job interviews. It includes six major modules covering topics such as large language models (LLMs), computer vision models, common problems in computer vision and perception algorithms, deep learning basics and frameworks, as well as specific tasks like 3D object detection, medical image segmentation, and more.
![InternVL Screenshot](/screenshots_githubs/OpenGVLab-InternVL.jpg)
InternVL
InternVL scales up the ViT to _**6B parameters**_ and aligns it with LLM. It is a vision-language foundation model that can perform various tasks, including: **Visual Perception** - Linear-Probe Image Classification - Semantic Segmentation - Zero-Shot Image Classification - Multilingual Zero-Shot Image Classification - Zero-Shot Video Classification **Cross-Modal Retrieval** - English Zero-Shot Image-Text Retrieval - Chinese Zero-Shot Image-Text Retrieval - Multilingual Zero-Shot Image-Text Retrieval on XTD **Multimodal Dialogue** - Zero-Shot Image Captioning - Multimodal Benchmarks with Frozen LLM - Multimodal Benchmarks with Trainable LLM - Tiny LVLM InternVL has been shown to achieve state-of-the-art results on a variety of benchmarks. For example, on the MMMU image classification benchmark, InternVL achieves a top-1 accuracy of 51.6%, which is higher than GPT-4V and Gemini Pro. On the DocVQA question answering benchmark, InternVL achieves a score of 82.2%, which is also higher than GPT-4V and Gemini Pro. InternVL is open-sourced and available on Hugging Face. It can be used for a variety of applications, including image classification, object detection, semantic segmentation, image captioning, and question answering.
![IOPaint Screenshot](/screenshots_githubs/Sanster-IOPaint.jpg)
IOPaint
IOPaint is a free and open-source inpainting & outpainting tool powered by SOTA AI model. It supports various AI models to perform erase, inpainting, or outpainting tasks. Users can remove unwanted objects, defects, watermarks, or people from images using erase models. Additionally, diffusion models can replace objects or perform outpainting. The tool also offers plugins for interactive object segmentation, background removal, anime segmentation, super resolution, face restoration, and file management. IOPaint provides a web UI for easy access to the latest AI models and supports batch processing of images through the command line. Developers can contribute to the project by installing front-end dependencies, setting up the backend, and starting the development environment for both front-end and back-end components.
![learnopencv Screenshot](/screenshots_githubs/spmallick-learnopencv.jpg)
learnopencv
LearnOpenCV is a repository containing code for Computer Vision, Deep learning, and AI research articles shared on the blog LearnOpenCV.com. It serves as a resource for individuals looking to enhance their expertise in AI through various courses offered by OpenCV. The repository includes a wide range of topics such as image inpainting, instance segmentation, robotics, deep learning models, and more, providing practical implementations and code examples for readers to explore and learn from.
![aitlas Screenshot](/screenshots_githubs/biasvariancelabs-aitlas.jpg)
aitlas
The AiTLAS toolbox (Artificial Intelligence Toolbox for Earth Observation) includes state-of-the-art machine learning methods for exploratory and predictive analysis of satellite imagery as well as a repository of AI-ready Earth Observation (EO) datasets. It can be easily applied for a variety of Earth Observation tasks, such as land use and cover classification, crop type prediction, localization of specific objects (semantic segmentation), etc. The main goal of AiTLAS is to facilitate better usability and adoption of novel AI methods (and models) by EO experts, while offering easy access and standardized format of EO datasets to AI experts which allows benchmarking of various existing and novel AI methods tailored for EO data.
![SimpleAICV_pytorch_training_examples Screenshot](/screenshots_githubs/zgcr-SimpleAICV_pytorch_training_examples.jpg)
SimpleAICV_pytorch_training_examples
SimpleAICV_pytorch_training_examples is a repository that provides simple training and testing examples for various computer vision tasks such as image classification, object detection, semantic segmentation, instance segmentation, knowledge distillation, contrastive learning, masked image modeling, OCR text detection, OCR text recognition, human matting, salient object detection, interactive segmentation, image inpainting, and diffusion model tasks. The repository includes support for multiple datasets and networks, along with instructions on how to prepare datasets, train and test models, and use gradio demos. It also offers pretrained models and experiment records for download from huggingface or Baidu-Netdisk. The repository requires specific environments and package installations to run effectively.
![aigt Screenshot](/screenshots_githubs/SlicerIGT-aigt.jpg)
aigt
AIGT is a repository containing scripts for deep learning in guided medical interventions, focusing on ultrasound imaging. It provides a complete workflow from formatting and annotations to real-time model deployment. Users can set up an Anaconda environment, run Slicer notebooks, acquire tracked ultrasound data, and process exported data for training. The repository includes tools for segmentation, image export, and annotation creation.
![Plug-play-modules Screenshot](/screenshots_githubs/AIFengheshu-Plug-play-modules.jpg)
Plug-play-modules
Plug-play-modules is a comprehensive collection of plug-and-play modules for AI, deep learning, and computer vision applications. It includes various convolution variants, latest attention mechanisms, feature fusion modules, up-sampling/down-sampling modules, suitable for tasks like image classification, object detection, instance segmentation, semantic segmentation, single object tracking (SOT), multi-object tracking (MOT), infrared object tracking (RGBT), image de-raining, de-fogging, de-blurring, super-resolution, and more. The modules are designed to enhance model performance and feature extraction capabilities across various tasks.
![DeepSparkHub Screenshot](/screenshots_githubs/Deep-Spark-DeepSparkHub.jpg)
DeepSparkHub
DeepSparkHub is a repository that curates hundreds of application algorithms and models covering various fields in AI and general computing. It supports mainstream intelligent computing scenarios in markets such as smart cities, digital individuals, healthcare, education, communication, energy, and more. The repository provides a wide range of models for tasks such as computer vision, face detection, face recognition, instance segmentation, image generation, knowledge distillation, network pruning, object detection, 3D object detection, OCR, pose estimation, self-supervised learning, semantic segmentation, super resolution, tracking, traffic forecast, GNN, HPC, methodology, multimodal, NLP, recommendation, reinforcement learning, speech recognition, speech synthesis, and 3D reconstruction.
![VideoCaptioner Screenshot](/screenshots_githubs/WEIFENG2333-VideoCaptioner.jpg)
VideoCaptioner
VideoCaptioner is a video subtitle processing assistant based on a large language model (LLM), supporting speech recognition, subtitle segmentation, optimization, translation, and full-process handling. It is user-friendly and does not require high configuration, supporting both network calls and local offline (GPU-enabled) speech recognition. It utilizes a large language model for intelligent subtitle segmentation, correction, and translation, providing stunning subtitles for videos. The tool offers features such as accurate subtitle generation without GPU, intelligent segmentation and sentence splitting based on LLM, AI subtitle optimization and translation, batch video subtitle synthesis, intuitive subtitle editing interface with real-time preview and quick editing, and low model token consumption with built-in basic LLM model for easy use.
![KrillinAI Screenshot](/screenshots_githubs/krillinai-KrillinAI.jpg)
KrillinAI
KrillinAI is a video subtitle translation and dubbing tool based on AI large models, featuring speech recognition, intelligent sentence segmentation, professional translation, and one-click deployment of the entire process. It provides a one-stop workflow from video downloading to the final product, empowering cross-language cultural communication with AI. The tool supports multiple languages for input and translation, integrates features like automatic dependency installation, video downloading from platforms like YouTube and Bilibili, high-speed subtitle recognition, intelligent subtitle segmentation and alignment, custom vocabulary replacement, professional-level translation engine, and diverse external service selection for speech and large model services.
![ForAINet Screenshot](/screenshots_githubs/prs-eth-ForAINet.jpg)
ForAINet
This repository contains the official code for the paper 'Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning'. It provides tools for point cloud segmentation experiments based on different settings, tree parameters extraction, handling large point clouds through tiling, predicting, and merging workflows. Additionally, it includes commands for training, testing, and evaluating the models, along with the necessary datasets and pretrained models.
![LabelQuick Screenshot](/screenshots_githubs/xaio6-LabelQuick.jpg)
LabelQuick
LabelQuick_V2.0 is a fast image annotation tool designed and developed by the AI Horizon team. This version has been optimized and improved based on the previous version. It provides an intuitive interface and powerful annotation and segmentation functions to efficiently complete dataset annotation work. The tool supports video object tracking annotation, quick annotation by clicking, and various video operations. It introduces the SAM2 model for accurate and efficient object detection in video frames, reducing manual intervention and improving annotation quality. The tool is designed for Windows systems and requires a minimum of 6GB of memory.
![human Screenshot](/screenshots_githubs/vladmandic-human.jpg)
human
AI-powered 3D Face Detection & Rotation Tracking, Face Description & Recognition, Body Pose Tracking, 3D Hand & Finger Tracking, Iris Analysis, Age & Gender & Emotion Prediction, Gaze Tracking, Gesture Recognition, Body Segmentation
![superduperdb Screenshot](/screenshots_githubs/SuperDuperDB-superduperdb.jpg)
superduperdb
SuperDuperDB is a Python framework for integrating AI models, APIs, and vector search engines directly with your existing databases, including hosting of your own models, streaming inference and scalable model training/fine-tuning. Build, deploy and manage any AI application without the need for complex pipelines, infrastructure as well as specialized vector databases, and moving our data there, by integrating AI at your data's source: - Generative AI, LLMs, RAG, vector search - Standard machine learning use-cases (classification, segmentation, regression, forecasting recommendation etc.) - Custom AI use-cases involving specialized models - Even the most complex applications/workflows in which different models work together SuperDuperDB is **not** a database. Think `db = superduper(db)`: SuperDuperDB transforms your databases into an intelligent platform that allows you to leverage the full AI and Python ecosystem. A single development and deployment environment for all your AI applications in one place, fully scalable and easy to manage.
3 - OpenAI Gpts
![B2B Startup Ideal Customer Co-pilot Screenshot](/screenshots_gpts/g-G9jLn33WH.jpg)
B2B Startup Ideal Customer Co-pilot
Guides B2B startups in a structured customer segment evaluation process. Stop guessing! Ideate, Evaluate & Make data-driven decision.