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ravika edited this page May 27, 2015 · 7 revisions

Projects Using Caffe

Fast R-CNN is a fast framework for object detection with deep ConvNets. Fast R-CNN

  • trains state-of-the-art models, like VGG16, 9x faster than traditional R-CNN and 3x faster than SPPnet,
  • runs 200x faster than R-CNN and 10x faster than SPPnet at test-time,
  • has a significantly higher mAP on PASCAL VOC than both R-CNN and SPPnet,
  • and is written in Python and C++/Caffe.

Please take a look at @rbgirshick work at https://github.com/rbgirshick/fast-rcnn


Expresso screenshot Expresso is a Python-based GUI for designing, training and using CNNs. Expresso uses Caffe as its backend CNN framework. Some of its salient features :

  • A convenient wizard-like interface to contextually guide the user during common scenarios such as data import, design and training of CNNs
  • A smart-edit interface makes net creation easy and quick.
  • Deep networks are color-coded and informatively presented
  • Support for training external classifier (SVM) using deep features (i.e. features extracted by passing image data through pre-trained CNN and tapping output at layer(s) of CNN).
  • Data Visualization

Visit the project page for installation details and links to text/video tutorials.

Other Useful Components

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