I'm building an application for Android devices that requires it to recognize, by accelerometer data, the difference between walking noise and double tapping it. I'm trying to solve this problem using Neural Networks.
At the start it went pretty well, teaching it to recognize the taps from noise such as standing up/ sitting down and walking around at a slower pace. But when it came to normal walking it never seemed to learn even though I fed it with a large proportion of noise data.
My question: Are there any serious flaws in my approach? Is the problem based on lack of data?
I've choosen a 25 input 1 output multi-layer perceptron, which I am training with backpropagation. The input is the changes in acceleration every 20ms and output ranges from -1 (for no-tap) to 1 (for tap). I've tried pretty much every constallation of hidden inputs there are, but had most luck with 3 - 10.
I'm using Neuroph's easyNeurons for the training and exporting to Java.
My total training data is about 50 pieces double taps and about 3k noise. But I've also tried to train it with proportional amounts of noise to double taps.
The data looks like this (ranges from +10 to -10):
Sitting double taps:
So to reiterate my questions: Are there any serious flaws in my approach here? Do I need more data for it to recognize the difference between walking and double tapping? Any other tips?
Ok so after much adjusting we've boiled the essential problem down to being able to recognize double taps while taking a brisk walk. Sitting and regular (in-house) walking we can solve pretty good.
So this is some test data of me first walking then stopping, standing still, then walking and doing 5 double taps while I'm walking.
If anyone is interested in the raw data, I linked it for the latest (brisk walk) data here