My goal is to detect cars in images and recognize its model. For car-detection, from http://docs.opencv.org/trunk/opencv_cheatsheet.pdf, it says:
Viola’s Cascade of Boosted classifiers us-ing Haar or LBP features. Suits for de-tecting faces, facial features and some other objects without diverse textures. See facedetect.cpp
N. Dalal’s object detector using Histogram-of-Oriented-Gradients (HOG) features. Suits for detect-ing people, cars and other objects with well-defined silhouettes. See peopledetect.cpp
and from http://docs.opencv.org/opencv2refman.pdf , chapter 8.1 Cascade Classification ,page 421:
First, a classifier (namely a cascade of boosted classifiers working with haar-like features) is trained with a few hundred sample views of a particular object (i.e., a face or a car), called positive examples, that are scaled to the same size (say, 20x20), and negative examples - arbitrary images of the same size.
Both of these two methods mention about applying for car detection: in opencv_cheatsheet.pdf it says HOGDescriptor suits for cars and in opencv2refman.pdf it also mentions cars for Cascade Classification. So my question is how to choose between CascadeClassifier and HOGDescriptor, and which is better for car detection? Thank you.