All current Object Detection Courses courses in 2024

60 קורסים

Deep learning for object detection using Tensorflow 2

Immerse yourself in the field of deep learning and object detection with our expertly crafted course, "Deep Learning for Object Detection using TensorFlow 2". This comprehensive program is designed to provide participants with a solid understanding of how to train and evaluate three advanced models: Faster RCNN, SSD, and YOLO v3, utilizing Te.
provider Udemy

YOLO: Automatic License Plate Detection & Extract text App

Udemy Embark on a journey to develop a cutting-edge License Plate Detection and Text Extraction Application. This course will guide you through the intricacies of Object Detection using YOLO, mastering Optical Character Recognition (OCR), and crafting a fully functional web application with Flask. Designed for enthusiasts of Artificial Intellig.
provider Udemy

图像采集与处理

Join our comprehensive Chinese language course to gain in-depth knowledge of image acquisition and processing. Delve into essential topics such as camera sensor technology and lens selection, paired with sophisticated image preprocessing methods like enhancement and edge detection. Learn various filtering techniques and explore object detect.
provider XuetangX

Computer Vision with OpenCV Python | Official OpenCV Course

Category: Python Courses Category: Computer Vision Courses Category: OpenCV Courses Category: Object Detection Courses Category: Object Tracking Courses Category: Edge Detection Courses Category: Image Manipulation Courses Category: Image Enhancement Courses Jump into the exciting world of Computer Vision with this comprehens.
provider Udemy

计算机视觉技术及应用

本课程提供图像采集、数据文件整理、图像清洗、图像增广、可视化图像检测结果、图像标注、视频标注、标注文件格式转换等全面的学习体验。您将获得对视觉应用场景的深入认知与实际部署的能力。
provider XuetangX

Computer Vision: YOLO Custom Object Detection with Colab GPU

Computer Vision: YOLO Custom Object Detection with Colab GPU In this comprehensive course, you'll dive into the world of real-time object detection with YOLO, one of the most powerful algorithms for detecting objects in images and videos. The course begins with an introduction to YOLO and object detection, followed by setting up your development.
provider Coursera

Hands-on Data Centric Visual AI

Hands-on Data Centric Visual AI This comprehensive course is a hands-on guide to developing and maintaining high-quality datasets for visual AI applications. Learners will gain in-depth knowledge and practical skills in: Discovering and implementing various labeling approaches, from manual to fully automated methods Assessing and impro.
provider Coursera

Using Neural Networks for Image and Voice Data Analysis

Using Neural Networks for Image and Voice Data Analysis Neural networks can be configured in various ways depending on the type of data and objectives. This course will help you understand how to properly choose a neural network architecture for image or audio data. Deep learning, as opposed to machine learning, allows a more robust way to dea.
provider Pluralsight

The AI Engineer Path

The AI Engineer Path Build cutting-edge applications powered by generative AI—an indispensable skill for 2024. Perfect for product teams at startups, agencies, and large corporations. Enhance your capabilities with courses in Generative AI, Object Detection, Vector Databases, and Hugging Face.

MathWorks Computer Vision Engineer

MathWorks Computer Vision Engineer Prepare for a career in the rapidly expanding field of computer vision. The ability to extract meaningful information from visual data is crucial for efficiently developing smart monitoring systems, enhancing medical diagnostics, and powering the next generation of autonomous vehicles. This program is designed.
provider Coursera

컴퓨터 비전 분야에서의 딥 러닝 응용 사례

컴퓨터 비전 분야에서의 딥 러닝 응용 사례 이 강의는 CU 볼더 대학교의 데이터 과학 석사(MS-DS) 학위 과정의 일부로써 학점 인정이 가능하며 Coursera 플랫폼을 통해 제공됩니다. MS-DS는 CU 볼더 대학교의 응용 수학, 컴퓨터 과학, 정보 과학 및 기타 여러 학과 교수진이 모여 만든 학제간 학위 과정입니다. MS-DS는 능력에 따라 입학이 허가되고 지원 절차가 없기 때문에.
provider Coursera
All upcoming courses at {name} on the AI ​​Education website. Check out all courses {name} and choose the one that's right for you.