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 human face detection


Human Face Detection in Visual Scenes

Neural Information Processing Systems

We present a neural network-based face detection system. A retinally connected neural network examines small windows of an image, and decides whether each window contains a face. The system arbitrates between multiple networks to improve performance over a single network. We use a bootstrap algorithm for training, which adds false detections into the training set as training progresses. This eliminates the difficult task of manually selecting non-face training examples, which must be chosen to span the entire space of non-face images.


Dog Classification with CNNs and Transfer Learning

#artificialintelligence

In this project, we will we will build a pipeline to process real-world, user-supplied images. The goal is to explore different Deep Learning models, using various architecture and techniques (like CNNs and Transfer Learning) and to get a first version of the model with a good performance. We will explore data sets, discuss metrics, present the results of the models as well as some hints on potential improvements. In the end, the final model could be potentially used within a web or mobile app to create an entertaining user experience in dog (or human) classification. To achieve our goals we need to train models using two different data sets: with human faces and with dog images.


Human Face Detection in Visual Scenes

Neural Information Processing Systems

We present a neural network-based face detection system. A retinally connected neural network examines small windows of an image, and decides whether each window contains a face. The system arbitrates between multiple networks to improve performance over a single network. We use a bootstrap algorithm for training, which adds false detections into the training set as training progresses. This eliminates the difficult task of manually selecting non-face training examples, which must be chosen to span the entire space of non-face images.


Human Face Detection in Visual Scenes

Neural Information Processing Systems

We present a neural network-based face detection system. A retinally connected neural network examines small windows of an image, and decides whether each window contains a face. The system arbitrates between multiple networks to improve performance over a single network. We use a bootstrap algorithm for training, which adds false detections into the training set as training progresses. This eliminates the difficult task of manually selecting non-face training examples, which must be chosen to span the entire space of non-face images.


Human Face Detection in Visual Scenes

Neural Information Processing Systems

We present a neural network-based face detection system. A retinally connected neural network examines small windows of an image, and decides whether each window contains a face. The system arbitrates between multiple networks to improve performance over a single network. We use a bootstrap algorithm for training, which adds false detections into the training set as training progresses. This eliminates the difficult task of manually selecting non-face training examples, which must be chosen to span the entire space of non-face images.