Use robot operating system (ROS) instead of raw openCV. Its got openCV AND kinect integration in one package.
ROS returns a 3D pointcloud from the kinect. OpenCV will not help you much on texture patch classifiers, infact I am not sure if it is relevant to your project.
Any machine learning exercise will require training data. so take lots of pictures (point clouds) of textures. Label them to form a training set and a validation set. Turn each point cloud into a single vector (behind the scenes the pointcloud is put in an array for transportation, so just use that). Then use any machine learning technique to predict the label from the data given the vector. Avoid overfitting by double checking the learn classifier validation set as you go along.
NOTE: all images are very very high dimensional, yet contain a lot of redundant data (nearby pixels look the same). You will need to reduce the dimensionality and make the vector elements be statistically independent. So first, use something like the Modular toolkit for Data Processing (MDP) and apply a dimension reduction technique like PCA to turn the 320x200 dimensional vector into something more like a 20 dimentional vector. Then do the learning on the smaller vector.