While working in the industry for almost 10 years, we have come across many of those tools to build commercial computer vision systems. At viso.ai, we power the leading computer vision infrastructure Viso Suite, included in the list below.

OpenVINO (Open Visual Inference and Neural Network Optimization) is a set of comprehensive computer vision tools that are useful for developing applications emulating human vision. Developed by Intel, it is a free-to-use cross-platform toolkit.

OpenCV is an open-source machine learning and computer vision software library. Created with a view of providing a common infrastructure for computer vision applications, OpenCV allows access to 2,500-plus classic and state-of-the-art algorithms.

The OpenVINO toolkit comes with models for several tasks like object detection, face recognition, colorization, movement recognition, and more. To learn more about this tool, I recommend you to read the article What is OpenVINO? The Ultimate Overview.

It supports various programming languages, including C, C++, Python, Fortran, or MATLAB, and is also compatible with most operating systems.

MATLAB is a programming platform that is useful for a range of different applications such as machine learning, deep learning, and image, video, and signal processing.

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CAFFE or Convolutional Architecture for Fast Feature Embedding is a deep learning and computer vision framework developed at the University of California, Berkeley.

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The model-driven architecture provides a robust and secure infrastructure to build computer vision pipelines with building blocks. The modular architecture allows using any camera (CCTV, IP, USB, etc.), any computing hardware (CPU, GPU, VPU, TPU, etc.), or ML framework. The high extensibility makes it easy to add custom code or integrate with Tableau, PowerBI, SAP, or external databases (AWS S3, MongoDB, etc.).

Faster than all other object detection tools out there, YOLO owes its speed to the application of a neural network to the complete image, which then partitions the image into grids. The software then simultaneously predicts the probabilities of each grid.

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In the following, we will list some of the most powerful and popular computer vision software tools for data scientists, machine learning, and development teams.

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About us: Viso.ai provides the leading end-to-end Computer Vision Platform Viso Suite. The infrastructure solution enables teams to build, deliver, and scale their computer vision applications. Get a demo for your company.

These algorithms are useful for several tasks, including face detection and recognition, red-eye removal, object identification, extraction of 3D models of objects, tracking moving objects, and stitching multiple frames together into a high-resolution image.

This framework is written in the C++ programming language and supports multiple deep learning architectures related to image classification and segmentation. It is especially useful for research purposes and industrial implementation due to its excellent speed and image-processing capabilities.

For real-world computer vision projects, the TensorFlow Lite is a lightweight implementation for on-device machine learning with edge devices. As part of TensorFlow, TF Lite greatly accelerates edge ML implementations with reduced model size and high accuracy at much higher efficiency, making it possible to run ML everywhere.

Keras is a Python-based open-source software library that acts as an interface for the machine learning platform TensorFlow. It is especially suited for beginners as it allows one to build a neural network model quickly while providing backend support.

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We hope this article helped you to find the best computer vision tools and software available right now. These are sure to assist you in developing the most powerful and effective computer vision-related solutions you need.

TensorFlow is one of the easiest computer vision tools and allows users to develop computer vision-related machine learning models for tasks like facial recognition, image classification, object detection, and more. It, like OpenCV, also supports various languages like Python, C, C++, Java, and JavaScript.

After the immensely popular YOLOv3 and YOLOv4, YOLOR achieved the best performance until it was surpassed by YOLOv7, released in 2022, YOLOv8, released in 2023, and YOLOv9, released in 2024.

SimpleCV is an open-source collection of libraries and software that allows you to develop machine vision applications easily. Through its framework, you gain access to several high-powered computer vision libraries such as OpenCV without the need to possess in-depth knowledge about complex concepts like bit depths, color spaces, buffer management, or file formats.

It comes with a computer vision toolbox that has multiple functions, apps, and algorithms to help you design solutions for tasks related to computer vision.

You Only Look Once, or YOLOv7 is among the fastest computer vision tools you can opt for in 2024. Developed by Joseph Redmon and Ali Farhadi in 2016, it was specifically made for real-time object detection.

If you are looking for image processing tools to perform face recognition, face verification, or real-time facial attribute analysis, DeepFace is a great way to use the best-performing deep learning recognition models (Google FaceNet, VGG-Face, OpenFace, Facebook DeepFace, and more).

In this article, we explore the most popular computer vision tools and their uses, to help you make informed decisions when selecting the right tool for your project.

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Viso Suite includes over 15 products in one solution, including image annotation, model training, model management, application development, device management, IoT communication, and custom dashboards. Enterprises and governmental organizations worldwide use Viso Suite to build and operate their portfolio of computer vision applications (for industrial automation, visual inspection, remote monitoring, and more).

CUDA (short for Compute Unified Device Architecture) is a parallel computing platform and application programming interface (API) model developed by NVIDIA. It allows developers to use the power of GPUs (Graphics Processing Units) to make processing-intensive applications faster.

DeepFace is currently the most popular open-source computer vision library for facial recognition with deep learning. The library offers an easy way to perform face recognition-based computer vision with Python.

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It is a complete library with all the basic and advanced features that one may require to develop a computer vision application.

TensorFlow is among the most popular end-to-end open-source machine learning platforms with a comprehensive set of tools, resources, and libraries. It is especially useful for building and deploying applications related to computer vision that are powered by machine learning.

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Viso Suite is an end-to-end computer vision platform for businesses to build, deploy, and monitor real-world computer vision applications. The platform is based on a best-in-class software stack for computer vision including CVAT, OpenCV, OpenVINO, TensorFlow, or PyTorch.

BoofCV is a Java-based computer vision software that is specially written for real-time computer vision solutions. It is open-source and is released under an Apache 2.0 license which makes it free to use for academic and commercial purposes.

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Viso Suite is the leading end to end computer vision infrastructure to build, deploy, and scale AI vision dramatically faster and better.

The toolkit includes the NVIDIA Performance Primitives (NPP) library that provides GPU-accelerated image, video processing, and signal processing functions for multiple domains, including computer vision. In addition, the CUDA architecture is useful for a wide range of tasks like face recognition, image manipulation, rendition of 3D graphics, and others. Real-time image processing with Nvidia CUDA is supported for Edge AI implementations, to run on-device AI inference on edge devices such as the Jetson TX2.

For more in-depth information about YOLO, we suggest you read some of the other articles we’ve written discussing the nuances between the various versions of YOLO:

OpenCV has multiple interfaces like C++, Python, Java, and MATLAB, and it supports most operating systems, including Windows, Android, Linux, and Mac. The computer vision library is widely used by international companies, including Google, Facebook, IBM, Toyota, Sony, Honda, and Microsoft.