I'm experimenting using reservoir computing techniques to classify images, but I'm not sure how to convert an arbitrary image to a time series.
I found this approach but it doesn't seem to be general enough.
As defined in that article, a time series is just a single-value function of one variable. However, an image is, in general, a multi-value function of two variables. So, in order to convert from an image to a 'time series', you're projecting down from a higher dimensional space to a lower dimensional one (for example, the radial scanning technique described collapses the image as a whole into an outline, which reduces the dimension to one). A key point is that these projections all 'lose data'. Since they're all lossy, there isn't going to be a 'general' solution that works for all uses of all images.. choosing what data you can afford to lose based on your intended application is a key aspect of using this technique. So, I guess my answer is that there is no single general way to convert an image to a 'time series' that works well for all applications.