(→Output) |
|||
(9 intermediate revisions by 2 users not shown) | |||
Line 3: | Line 3: | ||
== Example == | == Example == | ||
Object detection using [https://github.com/opencv/open_model_zoo/tree/master/demos/object_detection_demo_yolov3_async OpenCV and YOLO]. | Object detection using [https://github.com/opencv/open_model_zoo/tree/master/demos/object_detection_demo_yolov3_async OpenCV and YOLO]. | ||
=== Input === | === Input === | ||
[[File: | [[File:input dog.mp4]] | ||
=== Output === | === Output === | ||
[[File: | [[File:output dog.mp4]] | ||
[[File:log dog.txt]] | |||
[ | Here is the good olde color tracking in the new fancy clothes of "heuristics" https://towardsdatascience.com/real-time-object-detection-without-machine-learning-5139b399ee7d | ||
* [https://github.com/cloud-annotations/training cloud annotations] | |||
* [[Tracking Motion Detection]] this page is very much outdated since machine learning has become a thing |
Latest revision as of 22:59, 1 December 2019
This Assignment is a bit different. There is no precise instruction. Goal is to edit video according to image analysis, or more specifically: Object recognition. For this assignment everyone needs to communicate to coordinate the effort and share ideas how to reach that goal. Edit this page here.
Example
Object detection using OpenCV and YOLO.
Input
Output
Here is the good olde color tracking in the new fancy clothes of "heuristics" https://towardsdatascience.com/real-time-object-detection-without-machine-learning-5139b399ee7d
- cloud annotations
- Tracking Motion Detection this page is very much outdated since machine learning has become a thing