#ifndef CAFFE_EMBED_LAYER_HPP_ #define CAFFE_EMBED_LAYER_HPP_ #include #include "caffe/blob.hpp" #include "caffe/layer.hpp" #include "caffe/proto/caffe.pb.h" namespace caffe { /** * @brief A layer for learning "embeddings" of one-hot vector input. * Equivalent to an InnerProductLayer with one-hot vectors as input, but * for efficiency the input is the "hot" index of each column itself. * * TODO(dox): thorough documentation for Forward, Backward, and proto params. */ template class EmbedLayer : public Layer { public: explicit EmbedLayer(const LayerParameter& param) : Layer(param) {} virtual void LayerSetUp(const vector*>& bottom, const vector*>& top); virtual void Reshape(const vector*>& bottom, const vector*>& top); virtual inline const char* type() const { return "Embed"; } virtual inline int ExactNumBottomBlobs() const { return 1; } virtual inline int ExactNumTopBlobs() const { return 1; } protected: virtual void Forward_cpu(const vector*>& bottom, const vector*>& top); virtual void Forward_gpu(const vector*>& bottom, const vector*>& top); virtual void Backward_cpu(const vector*>& top, const vector& propagate_down, const vector*>& bottom); virtual void Backward_gpu(const vector*>& top, const vector& propagate_down, const vector*>& bottom); int M_; int K_; int N_; bool bias_term_; Blob bias_multiplier_; }; } // namespace caffe #endif // CAFFE_EMBED_LAYER_HPP_