/** H0 = H*M P=[M|m] from canonical camera */ private SimpleMatrix computeHZero(DenseMatrix64F F, Point3D_F64 e2, SimpleMatrix H) { Vector3D_F64 v = new Vector3D_F64(.1, 0.5, .2); // need to make sure M is not singular for this technique to work SimpleMatrix P = SimpleMatrix.wrap(MultiViewOps.canonicalCamera(F, e2, v, 1)); SimpleMatrix M = P.extractMatrix(0, 3, 0, 3); return H.mult(M); }
public void backpropDerivative( Tree tree, List<String> words, IdentityHashMap<Tree, SimpleMatrix> nodeVectors, TwoDimensionalMap<String, String, SimpleMatrix> binaryW_dfs, Map<String, SimpleMatrix> unaryW_dfs, TwoDimensionalMap<String, String, SimpleMatrix> binaryScoreDerivatives, Map<String, SimpleMatrix> unaryScoreDerivatives, Map<String, SimpleMatrix> wordVectorDerivatives, SimpleMatrix deltaUp) { if (tree.isLeaf()) { return; } if (tree.isPreTerminal()) { if (op.trainOptions.trainWordVectors) { String word = tree.children()[0].label().value(); word = dvModel.getVocabWord(word); // SimpleMatrix currentVector = nodeVectors.get(tree); // SimpleMatrix currentVectorDerivative = // nonlinearityVectorToDerivative(currentVector); // SimpleMatrix derivative = deltaUp.elementMult(currentVectorDerivative); SimpleMatrix derivative = deltaUp; wordVectorDerivatives.put(word, wordVectorDerivatives.get(word).plus(derivative)); } return; } SimpleMatrix currentVector = nodeVectors.get(tree); SimpleMatrix currentVectorDerivative = NeuralUtils.elementwiseApplyTanhDerivative(currentVector); SimpleMatrix scoreW = dvModel.getScoreWForNode(tree); currentVectorDerivative = currentVectorDerivative.elementMult(scoreW.transpose()); // the delta that is used at the current nodes SimpleMatrix deltaCurrent = deltaUp.plus(currentVectorDerivative); SimpleMatrix W = dvModel.getWForNode(tree); SimpleMatrix WTdelta = W.transpose().mult(deltaCurrent); if (tree.children().length == 2) { // TODO: RS: Change to the nice "getWForNode" setup? String leftLabel = dvModel.basicCategory(tree.children()[0].label().value()); String rightLabel = dvModel.basicCategory(tree.children()[1].label().value()); binaryScoreDerivatives.put( leftLabel, rightLabel, binaryScoreDerivatives.get(leftLabel, rightLabel).plus(currentVector.transpose())); SimpleMatrix leftVector = nodeVectors.get(tree.children()[0]); SimpleMatrix rightVector = nodeVectors.get(tree.children()[1]); SimpleMatrix childrenVector = NeuralUtils.concatenateWithBias(leftVector, rightVector); if (op.trainOptions.useContextWords) { childrenVector = concatenateContextWords(childrenVector, tree.getSpan(), words); } SimpleMatrix W_df = deltaCurrent.mult(childrenVector.transpose()); binaryW_dfs.put(leftLabel, rightLabel, binaryW_dfs.get(leftLabel, rightLabel).plus(W_df)); // and then recurse SimpleMatrix leftDerivative = NeuralUtils.elementwiseApplyTanhDerivative(leftVector); SimpleMatrix rightDerivative = NeuralUtils.elementwiseApplyTanhDerivative(rightVector); SimpleMatrix leftWTDelta = WTdelta.extractMatrix(0, deltaCurrent.numRows(), 0, 1); SimpleMatrix rightWTDelta = WTdelta.extractMatrix(deltaCurrent.numRows(), deltaCurrent.numRows() * 2, 0, 1); backpropDerivative( tree.children()[0], words, nodeVectors, binaryW_dfs, unaryW_dfs, binaryScoreDerivatives, unaryScoreDerivatives, wordVectorDerivatives, leftDerivative.elementMult(leftWTDelta)); backpropDerivative( tree.children()[1], words, nodeVectors, binaryW_dfs, unaryW_dfs, binaryScoreDerivatives, unaryScoreDerivatives, wordVectorDerivatives, rightDerivative.elementMult(rightWTDelta)); } else if (tree.children().length == 1) { String childLabel = dvModel.basicCategory(tree.children()[0].label().value()); unaryScoreDerivatives.put( childLabel, unaryScoreDerivatives.get(childLabel).plus(currentVector.transpose())); SimpleMatrix childVector = nodeVectors.get(tree.children()[0]); SimpleMatrix childVectorWithBias = NeuralUtils.concatenateWithBias(childVector); if (op.trainOptions.useContextWords) { childVectorWithBias = concatenateContextWords(childVectorWithBias, tree.getSpan(), words); } SimpleMatrix W_df = deltaCurrent.mult(childVectorWithBias.transpose()); // System.out.println("unary backprop derivative for " + childLabel); // System.out.println("Old transform:"); // System.out.println(unaryW_dfs.get(childLabel)); // System.out.println(" Delta:"); // System.out.println(W_df.scale(scale)); unaryW_dfs.put(childLabel, unaryW_dfs.get(childLabel).plus(W_df)); // and then recurse SimpleMatrix childDerivative = NeuralUtils.elementwiseApplyTanhDerivative(childVector); // SimpleMatrix childDerivative = childVector; SimpleMatrix childWTDelta = WTdelta.extractMatrix(0, deltaCurrent.numRows(), 0, 1); backpropDerivative( tree.children()[0], words, nodeVectors, binaryW_dfs, unaryW_dfs, binaryScoreDerivatives, unaryScoreDerivatives, wordVectorDerivatives, childDerivative.elementMult(childWTDelta)); } }