Skip to content

Latest commit

 

History

History
23 lines (15 loc) · 946 Bytes

README.md

File metadata and controls

23 lines (15 loc) · 946 Bytes

Indoor Object Detection

In this project, the goal is to apply pretrained machine learning models on images taken from home/living spaces/indoor and try to detect the objects in the picture.

There is also a feature to extract the text (website, phone number, Address etc.) from the pictures as well.

Sample Detections Having these contexual information, the next step is to combine these raw information and image data to infere a higher level knowledge out of the pictures.

Models

  • Yolo
  • resnet
  • DenseNet

Library

  • ML: Imageai's ImagePrediction and ObjectDetection
  • Text extraction: pytesseract and cv2

Sample Extracted Text

Sample Text Extraction

BzgkDahBHk3.jpg, [], [], ['[EM@eeee', '[email protected]'], #12-xxx Lynn Valley Road, North Vancouver||2 bedrooms + 11/2 bathrooms||ROOFTOP DECK ROOFTOP DECK|Top Floor - 97 sq.ft. 7