public List <List <float> > SpaceCosts(List <Candidate> candidates, Bytearray image) { /* * Given a list of character recognition candidates and their * classifications, and an image of the corresponding text line, * compute a list of pairs of costs for putting/not putting a space * after each of the candidate characters. * * The basic idea behind this simple algorithm is to try larger * and larger horizontal closing operations until most of the components * start having a "wide" aspect ratio; that's when characters have merged * into words. The remaining whitespace should be spaces. * * This is just a simple stopgap measure; it will be replaced with * trainable space modeling. */ int w = image.Dim(0); int h = image.Dim(1); Bytearray closed = new Bytearray(); int r; for (r = 0; r < maxrange; r++) { if (r > 0) { closed.Copy(image); Morph.binary_close_circle(closed, r); } else { closed.Copy(image); } Intarray labeled = new Intarray(); labeled.Copy(closed); ImgLabels.label_components(ref labeled); Narray <Rect> rects = new Narray <Rect>(); ImgLabels.bounding_boxes(ref rects, labeled); Floatarray aspects = new Floatarray(); for (int i = 0; i < rects.Length(); i++) { Rect rect = rects[i]; float aspect = rect.Aspect(); aspects.Push(aspect); } float maspect = NarrayUtil.Median(aspects); if (maspect >= this.aspect_threshold) { break; } } // close with a little bit of extra space closed.Copy(image); Morph.binary_close_circle(closed, r + 1); // compute the remaining aps //Morph.binary_dilate_circle(); // every character box that ends near a cap gets a space appended return(null); }