I have a training set of images, for each of which I've detected and computed their feature vectors (using ORB feature descriptors and extractors. The questions is: since I need to save those features to reutilise them for matching against test images (using SVM classifier); what is the best way to store the feature vectors, locally on the Android device?
The feature vectors to be saved are of variable size per image, and are thus those with non-maximal sizes are padded with zeros to unify all vectors' sizes. The maximum size currently is 500 rows x 32 cols; thus 16k features.
here are the options I could reach so far;
- I've heard of OpenCV's FileStorage, but when going through the java documentation, I noticed a
savemethod for HOG features (not ORB). Furthermore, I'm not sure if saving features using OpenCV's file storage options would be most optimal memory-wise for Android phones, given that the xml file would be too large to load.
- My current choice is to opt for a sqlLite database, having a table with two cols; id and feature (as frequently suggested online); to tabulate all the 16k features in sqlLite. That seems rather phone-storage intensive, but it's the most reasonable solution I can find.
Is there a common method to handling feature vectors on Android phones? Does it encompass any of the above methods; if not can you please offer some guidelines on how to implement such a storage solution?