OverFeat: Integrated Recognition, Localization and Detection using Convolutional Networks
New York University · Courant Institute of Mathematical Sciences
Abstract
We present an integrated framework for using Convolutional Networks for classification, localization and detection. We show how a multiscale and sliding window approach can be efficiently implemented within a ConvNet. We also introduce a novel deep learning approach to localization by learning to predict object boundaries. Bounding boxes are then accumulated rather than suppressed in order to increase detection confidence. We show that different tasks can be learned simultaneously using a single shared network. This integrated framework is the winner of the localization task of the ImageNet Large Scale Visual Recognition Challenge 2013 (ILSVRC2013) and obtained very competitive results for the detection and…
Citation impact
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- References
- 19
Authors
6- PSPierre SermanetCorresponding
New York University, Courant Institute of Mathematical Sciences
- DEDavid Eigen
New York University, Courant Institute of Mathematical Sciences
- XZXiang Zhang
New York University, Courant Institute of Mathematical Sciences
- MMMichaël Mathieu
Courant Institute of Mathematical Sciences, New York University
- RFRob Fergus
New York University, Courant Institute of Mathematical Sciences
Topics & keywords
- Computer science
- Bounding overwatch
- Artificial intelligence
- Sliding window protocol
- Object detection
- Task (project management)
- Extractor
- Convolutional neural network