In this tutorial, we’re using Google’s MediaPipe and Python to build a professional-grade object detector that runs incredibly fast on standard hardware.
Whether you're a student, researcher, or developer, you'll learn how to leverage pre-trained TFLite models (EfficientDet) to identify objects in images with just a few lines of code. We’ll break down the logic of bounding boxes, confidence scores, and real-time visualization.
You’ll learn how to:
✅ Installing and configuring the MediaPipe Vision library.
✅ Loading and processing images using OpenCV.
✅ Running inference and interpreting AI detection results.
✅ Visualizing bounding boxes and labels with precision.
Download the code for the tutorial here : https://eranfeit.lemonsqueezy.com/che... or here : https://ko-fi.com/s/264a7e20ae
Link to the full post and code here : https://eranfeit.net/fast-object-dete...
Link to the post and code for Medium users : / quick-start-guide-deploying-mediapipe-obje...
You can find more computer vision tutorials in my blog page : https://eranfeit.net/blog/
You can find more Visual Language models tutorials tutorials in this playlist : • Visual Language Models tutorials 2026
You can find more image Classification tutorials in this playlist : • How to Use FasterViT for Custom Image Clas...
~~~~~~~~~~~~~~~ Best AI Photo Tools (Backgrounds, Objects, Headshots) ~~~~~~~~~~~~~~~
✅ Phot-AI packs more than 30 AI powered tools into one place—covering background and object removal/replacement, image extension and a suite of creative generators for art, icons and logos.
follow the link and start creating : https://phot.ai?ref=eran33
✅ Pixelcut uses AI to help you create professional photos and videos. You can instantly remove backgrounds, retouch, expand and upscale images, or generate new images and even videos from a simple text prompt or reference picture.
tap the link and start creating today! : https://pixelcut.ai/?via=eran
✅ PhotoGPT AI acts as your personal photographer—just describe what you need and the platform generates high quality headshots or casual images within minutes.
Its built in photo editor lets you remove objects, replace backgrounds and make studio quality corrections with a single click.
You can even train your own AI model using a few selfies, receive context aware prompt suggestions and upscale images for print ready results.
Dive into
~~~~~~~~~~~~~~~ recommended courses and books ~~~~~~~~~~~~~~~
🚀 Want to get started with Computer Vision or take your skills to the next level ?
Great Interactive Course : "Deep Learning for Images with PyTorch" here : https://datacamp.pxf.io/zxWxnm
If you’re just beginning, I recommend this step-by-step course designed to introduce you to the foundations of Computer Vision : https://trk.udemy.com/9LoE7E
If you’re already experienced and looking for more advanced techniques, check out this deep-dive course : https://trk.udemy.com/EEDyMD
I also recommend this book, https://amzn.to/3GBMNLC : "Practical Machine Learning for Computer Vision" by Oreilly
~~~~~~~~~~~~~~~ CONNECT ~~~~~~~~~~~~~~~
☕ Buy me a coffee - https://ko-fi.com/eranfeit
🖥️ Email : feitgemel@gmail.com
🌐 https://eranfeit.net
🤝 Fiverr : https://www.fiverr.com/s/mB3Pbb
🐦 Twitter - / eran_feit
📸 Instagram - / eran_feit
▶️ Subscribe - / @eranfeit
🐙 Facebook - / 3080601358933585
📝 Medium - / feitgemel
~~~~~~~~~~~~~~ SUPPORT ME 🙏~~~~~~~~~~~~~~
🅿 Patreon - / eranfeit
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
#EranFeit #objectdetection #mediapipe
~~~~~~~~~~~~~~ Chapters ~~~~~~~~~~~~~
00:00 Introduction and Demo
00:20 Installation
02:46 let's start coding
~~~~~~~~~~~~~~ Credits ~~~~~~~~~~~~~
Music by Vincent Rubinetti
Download the music on Bandcamp: https://vincerubinetti.bandcamp.com/a...
Stream the music on Spotify: https://open.spotify.com/album/1dVyjw...
Auf dieser Seite können Sie das Online-Video MediaPipe Tutorial: Fast Object Detection in Python mit der Dauer stunde minuten sekunde in guter Qualität ansehen, das der Benutzer Eran Feit 06 März 2026 hochgeladen hat, den Link mit Freunden und Bekannten teilen, dieses Video wurde auf Youtube bereits 2,236 Mal angesehen und es wurde von 18 den Zuschauern gefallen. Viel Spaß beim Betrachtenden Zuschauern gefallen!