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diff --git a/leptonica/src/recog.h b/leptonica/src/recog.h new file mode 100644 index 00000000..44e6aa18 --- /dev/null +++ b/leptonica/src/recog.h @@ -0,0 +1,264 @@ +/*====================================================================* + - Copyright (C) 2001 Leptonica. All rights reserved. + - + - Redistribution and use in source and binary forms, with or without + - modification, are permitted provided that the following conditions + - are met: + - 1. Redistributions of source code must retain the above copyright + - notice, this list of conditions and the following disclaimer. + - 2. Redistributions in binary form must reproduce the above + - copyright notice, this list of conditions and the following + - disclaimer in the documentation and/or other materials + - provided with the distribution. + - + - THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + - ``AS IS'' AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + - LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + - A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL ANY + - CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, + - EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, + - PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR + - PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY + - OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING + - NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS + - SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + *====================================================================*/ + +#ifndef LEPTONICA_RECOG_H +#define LEPTONICA_RECOG_H + +/*! + * \file recog.h + * + * <pre> + * This is a simple utility for training and recognizing individual + * machine-printed text characters. It is designed to be adapted + * to a particular set of character images; e.g., from a book. + * + * There are two methods of training the recognizer. In the most + * simple, a set of bitmaps has been labeled by some means, such + * a generic OCR program. This is input either one template at a time + * or as a pixa of templates, to a function that creates a recog. + * If in a pixa, the text string label must be embedded in the + * text field of each pix. + * + * If labeled data is not available, we start with a bootstrap + * recognizer (BSR) that has labeled data from a variety of sources. + * These images are scaled, typically to a fixed height, and then + * fed similarly scaled unlabeled images from the source (e.g., book), + * and the BSR attempts to identify them. All images that have + * a high enough correlation score with one of the templates in the + * BSR are emitted in a pixa, which now holds unscaled and labeled + * templates from the source. This is the generator for a book adapted + * recognizer (BAR). + * + * The pixa should always be thought of as the primary structure. + * It is the generator for the recog, because a recog is built + * from a pixa of unscaled images. + * + * New image templates can be added to a recog as long as it is + * in training mode. Once training is finished, to add templates + * it is necessary to extract the generating pixa, add templates + * to that pixa, and make a new recog. Similarly, we do not + * join two recog; instead, we simply join their generating pixa, + * and make a recog from that. + * + * To remove outliers from a pixa of labeled pix, make a recog, + * determine the outliers, and generate a new pixa with the + * outliers removed. The outliers are determined by building + * special templates for each character set that are scaled averages + * of the individual templates. Then a correlation score is found + * between each template and the averaged templates. There are + * two implementations; outliers are determined as either: + * (1) a template having a correlation score with its class average + * that is below a threshold, or + * (2) a template having a correlation score with its class average + * that is smaller than the correlation score with the average + * of another class. + * Outliers are removed from the generating pixa. Scaled averaging + * is only performed for determining outliers and for splitting + * characters; it is never used in a trained recognizer for identifying + * unlabeled samples. + * + * Two methods using averaged templates are provided for splitting + * touching characters: + * (1) greedy matching + * (2) document image decoding (DID) + * The DID method is the default. It is about 5x faster and + * possibly more accurate. + * + * Once a BAR has been made, unlabeled sample images are identified + * by finding the individual template in the BAR with highest + * correlation. The input images and images in the BAR can be + * represented in two ways: + * (1) as scanned, binarized to 1 bpp + * (2) as a width-normalized outline formed by thinning to a + * skeleton and then dilating by a fixed amount. + * + * The recog can be serialized to file and read back. The serialized + * version holds the templates used for correlation (which may have + * been modified by scaling and turning into lines from the unscaled + * templates), plus, for arbitrary character sets, the UTF8 + * representation and the lookup table mapping from the character + * representation to index. + * + * Why do we not use averaged templates for recognition? + * Letterforms can take on significantly different shapes (eg., + * the letters 'a' and 'g'), and it makes no sense to average these. + * The previous version of this utility allowed multiple recognizers + * to exist, but this is an unnecessary complication if recognition + * is done on all samples instead of on averages. + * </pre> + */ + +#define RECOG_VERSION_NUMBER 2 + +struct L_Recog { + l_int32 scalew; /*!< scale all examples to this width; */ + /*!< use 0 prevent horizontal scaling */ + l_int32 scaleh; /*!< scale all examples to this height; */ + /*!< use 0 prevent vertical scaling */ + l_int32 linew; /*!< use a value > 0 to convert the bitmap */ + /*!< to lines of fixed width; 0 to skip */ + l_int32 templ_use; /*!< template use: use either the average */ + /*!< or all temmplates (L_USE_AVERAGE or */ + /*!< L_USE_ALL) */ + l_int32 maxarraysize; /*!< initialize container arrays to this */ + l_int32 setsize; /*!< size of character set */ + l_int32 threshold; /*!< for binarizing if depth > 1 */ + l_int32 maxyshift; /*!< vertical jiggle on nominal centroid */ + /*!< alignment; typically 0 or 1 */ + l_int32 charset_type; /*!< one of L_ARABIC_NUMERALS, etc. */ + l_int32 charset_size; /*!< expected number of classes in charset */ + l_int32 min_nopad; /*!< min number of samples without padding */ + l_int32 num_samples; /*!< number of training samples */ + l_int32 minwidth_u; /*!< min width averaged unscaled templates */ + l_int32 maxwidth_u; /*!< max width averaged unscaled templates */ + l_int32 minheight_u; /*!< min height averaged unscaled templates */ + l_int32 maxheight_u; /*!< max height averaged unscaled templates */ + l_int32 minwidth; /*!< min width averaged scaled templates */ + l_int32 maxwidth; /*!< max width averaged scaled templates */ + l_int32 ave_done; /*!< set to 1 when averaged bitmaps are made */ + l_int32 train_done; /*!< set to 1 when training is complete or */ + /*!< identification has started */ + l_float32 max_wh_ratio; /*!< max width/height ratio to split */ + l_float32 max_ht_ratio; /*!< max of max/min template height ratio */ + l_int32 min_splitw; /*!< min component width kept in splitting */ + l_int32 max_splith; /*!< max component height kept in splitting */ + struct Sarray *sa_text; /*!< text array for arbitrary char set */ + struct L_Dna *dna_tochar; /*!< index-to-char lut for arbitrary charset */ + l_int32 *centtab; /*!< table for finding centroids */ + l_int32 *sumtab; /*!< table for finding pixel sums */ + struct Pixaa *pixaa_u; /*!< all unscaled templates for each class */ + struct Ptaa *ptaa_u; /*!< centroids of all unscaled templates */ + struct Numaa *naasum_u; /*!< area of all unscaled templates */ + struct Pixaa *pixaa; /*!< all (scaled) templates for each class */ + struct Ptaa *ptaa; /*!< centroids of all (scaledl) templates */ + struct Numaa *naasum; /*!< area of all (scaled) templates */ + struct Pixa *pixa_u; /*!< averaged unscaled templates per class */ + struct Pta *pta_u; /*!< centroids of unscaled ave. templates */ + struct Numa *nasum_u; /*!< area of unscaled averaged templates */ + struct Pixa *pixa; /*!< averaged (scaled) templates per class */ + struct Pta *pta; /*!< centroids of (scaled) ave. templates */ + struct Numa *nasum; /*!< area of (scaled) averaged templates */ + struct Pixa *pixa_tr; /*!< all input training images */ + struct Pixa *pixadb_ave; /*!< unscaled and scaled averaged bitmaps */ + struct Pixa *pixa_id; /*!< input images for identifying */ + struct Pix *pixdb_ave; /*!< debug: best match of input against ave. */ + struct Pix *pixdb_range; /*!< debug: best matches within range */ + struct Pixa *pixadb_boot; /*!< debug: bootstrap training results */ + struct Pixa *pixadb_split; /*!< debug: splitting results */ + struct L_Bmf *bmf; /*!< bmf fonts */ + l_int32 bmf_size; /*!< font size of bmf; default is 6 pt */ + struct L_Rdid *did; /*!< temp data used for image decoding */ + struct L_Rch *rch; /*!< temp data used for holding best char */ + struct L_Rcha *rcha; /*!< temp data used for array of best chars */ +}; +typedef struct L_Recog L_RECOG; + +/*! + * Data returned from correlation matching on a single character + */ +struct L_Rch { + l_int32 index; /*!< index of best template */ + l_float32 score; /*!< correlation score of best template */ + char *text; /*!< character string of best template */ + l_int32 sample; /*!< index of best sample (within the best */ + /*!< template class, if all samples are used) */ + l_int32 xloc; /*!< x-location of template (delx + shiftx) */ + l_int32 yloc; /*!< y-location of template (dely + shifty) */ + l_int32 width; /*!< width of best template */ +}; +typedef struct L_Rch L_RCH; + +/*! + * Data returned from correlation matching on an array of characters + */ +struct L_Rcha { + struct Numa *naindex; /*!< indices of best templates */ + struct Numa *nascore; /*!< correlation scores of best templates */ + struct Sarray *satext; /*!< character strings of best templates */ + struct Numa *nasample; /*!< indices of best samples */ + struct Numa *naxloc; /*!< x-locations of templates (delx + shiftx) */ + struct Numa *nayloc; /*!< y-locations of templates (dely + shifty) */ + struct Numa *nawidth; /*!< widths of best templates */ +}; +typedef struct L_Rcha L_RCHA; + +/*! + * Data used for decoding a line of characters. + */ +struct L_Rdid { + struct Pix *pixs; /*!< clone of pix to be decoded */ + l_int32 **counta; /*!< count array for each averaged template */ + l_int32 **delya; /*!< best y-shift array per average template */ + l_int32 narray; /*!< number of averaged templates */ + l_int32 size; /*!< size of count array (width of pixs) */ + l_int32 *setwidth; /*!< setwidths for each template */ + struct Numa *nasum; /*!< pixel count in pixs by column */ + struct Numa *namoment; /*!< first moment of pixels in pixs by cols */ + l_int32 fullarrays; /*!< 1 if full arrays are made; 0 otherwise */ + l_float32 *beta; /*!< channel coeffs for template fg term */ + l_float32 *gamma; /*!< channel coeffs for bit-and term */ + l_float32 *trellisscore; /*!< score on trellis */ + l_int32 *trellistempl; /*!< template on trellis (for backtrack) */ + struct Numa *natempl; /*!< indices of best path templates */ + struct Numa *naxloc; /*!< x locations of best path templates */ + struct Numa *nadely; /*!< y locations of best path templates */ + struct Numa *nawidth; /*!< widths of best path templates */ + struct Boxa *boxa; /*!< Viterbi result for splitting input pixs */ + struct Numa *nascore; /*!< correlation scores: best path templates */ + struct Numa *natempl_r; /*!< indices of best rescored templates */ + struct Numa *nasample_r; /*!< samples of best scored templates */ + struct Numa *naxloc_r; /*!< x locations of best rescoredtemplates */ + struct Numa *nadely_r; /*!< y locations of best rescoredtemplates */ + struct Numa *nawidth_r; /*!< widths of best rescoredtemplates */ + struct Numa *nascore_r; /*!< correlation scores: rescored templates */ +}; +typedef struct L_Rdid L_RDID; + + +/*-------------------------------------------------------------------------* + * Flags for describing limited character sets * + *-------------------------------------------------------------------------*/ +/*! Character Set */ +enum { + L_UNKNOWN = 0, /*!< character set type is not specified */ + L_ARABIC_NUMERALS = 1, /*!< 10 digits */ + L_LC_ROMAN_NUMERALS = 2, /*!< 7 lower-case letters (i,v,x,l,c,d,m) */ + L_UC_ROMAN_NUMERALS = 3, /*!< 7 upper-case letters (I,V,X,L,C,D,M) */ + L_LC_ALPHA = 4, /*!< 26 lower-case letters */ + L_UC_ALPHA = 5 /*!< 26 upper-case letters */ +}; + +/*-------------------------------------------------------------------------* + * Flags for selecting between using average and all templates: * + * recog->templ_use * + *-------------------------------------------------------------------------*/ +/*! Template Select */ +enum { + L_USE_ALL_TEMPLATES = 0, /*!< use all templates; default */ + L_USE_AVERAGE_TEMPLATES = 1 /*!< use average templates; special cases */ +}; + +#endif /* LEPTONICA_RECOG_H */ |