Artículo Científico. Real-time face detection using artificial neural networks.
In this paper, we propose a model for face detection that works in both real-time and unstructured environments. for feature extraction, we applied the HOG (Histrograms of Oriented Gradients) technique in a cononical window. For classification, we used a feed-forward neural network. We tested the pe...
Shranjeno v:
Glavni avtor: | |
---|---|
Drugi avtorji: | |
Format: | article |
Jezik: | eng |
Izdano: |
2017
|
Teme: | |
Online dostop: | http://repositorio.espe.edu.ec/handle/21000/13928 |
Oznake: |
Označite
Brez oznak, prvi označite!
|
Izvleček: | In this paper, we propose a model for face detection that works in both real-time and unstructured environments. for feature extraction, we applied the HOG (Histrograms of Oriented Gradients) technique in a cononical window. For classification, we used a feed-forward neural network. We tested the performance of the proposed model at detecting faces in sequences of color images. For this task, we created a database containing color image patches of faces and background to train the neural network and color images of 320 x 240 to test the model. The database is available at http://electronica-el.espe.edu.ec/actividad-estudiantil/face-database/. To achieve real-time, we split the model into several modules that run in parallel. the proposed model exhibited an accuracy of 91.4% and demonstrated robustness to changes in illumination, pose and occlusion. For the tests, we used a 2-core-2.5 GHz PC with 6 GB of RAM memory, where input frames of 320 x 240 were processed in an average time of 81 ms. |
---|