Face Detection

Face Detection

For Face Detection, the algorithm libraries used are

  • MTCNN (Multi-task Cascaded Convolutional Neural Networks)
  • RetinaFace

(info)

Notes:

  • MTCNN is a faster algorithm compared to RetinaFace. 
  • It can be used in the case of images with many faces and where high accuracy of face detection is not expected.
  • MTCNN shows a lower accuracy in the case of tilted or distorted faces in images.
  • RetinaFace algorithm takes time to load but is more accurate with the face detection results.
  • From Face Detection results, you can download files for detected images and faces to your machine using the links provided in the output.

The available properties of Face Detection are as shown in the figure given below.


Using the Properties pane, you can select

    • A suitable name for the task
    • The input image(s) for analysis
    • The Detector is the pre-trained model for analysis

In the output, you see highlighted faces to indicate that the faces are successfully detected.

Also, in the output, you see the detected faces individually displayed, beside the main image containing all the detected faces.

(info) Notes:

From Face Detection results, you can download files for the images and each detected face. You can store them in your machine using the links provided on the Result page.


    • Related Articles

    • Face Detection

      For Face Detection, the algorithm libraries used are MTCNN (Multi-task Cascaded Convolutional Neural Networks) RetinaFace Notes: MTCNN is a faster algorithm compared to RetinaFace. It can be used in the case of images with many faces and where high ...
    • Face Verification

      Models and Parameters used in Face Verification There are several pre-trained models and other parameters required for face verification. Also, face verification is preceded by face detection. Listed below are the models and parameters used in ...
    • Face Verification

      Models and Parameters used in Face Verification There are several pre-trained models and other parameters required for face verification. Also, face verification is preceded by face detection. Listed below are the models and parameters used in ...
    • Outlier Detection

      Outlier Detection is located under Model Studio in Data Preparation, in the task pane on the left. Use drag-and-drop method to use algorithm in the canvas. Click the algorithm to view and select different properties for analysis. Refer to Properties ...
    • Outlier Detection

      Outlier Detection is located under Model Studio ( ) in Data Preparation, in the task pane on the left. Use drag-and-drop method to use algorithm in the canvas. Click the algorithm to view and select different properties for analysis. Refer to ...