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Microsoft’s Cursive Handwriting Recognizer. Jay Pittman and the entire Microsoft Handwriting Recognition Research and Development Team jpittman@microsoft.com. Agenda. Neural Network Review Basic Recognition Architecture Language Model Personalization Error Reporting New Languages.
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Microsoft’s Cursive Handwriting Recognizer Jay Pittman and the entire Microsoft Handwriting Recognition Research and Development Team jpittman@microsoft.com
Agenda • Neural Network Review • Basic Recognition Architecture • Language Model • Personalization • Error Reporting • New Languages
Handwriting Recognition Team • An experiment: • A research group, but not housed in MSR • Positioned inside a product group • Our direction and inspiration come directly from the users • This isn’t for everyone, but we like it • A dozen researchers • Half with PhDs • Mostly CS, but 1 Neuroscience, 1 Chemistry, 1 Industrial Engineering, 1 Speech • Roughly half neural network researchers • With various other recognition technologies
Neural Network Review 1.0 -2.3 1.4 1.0 0.1 -0.1 0.6 0.0 0.0 0.8 -0.8 0.0 0.7 Inputs Outputs Hiddens • Directed acyclic graph • Nodes and arcs, each containing a simple value • Nodes contain activations, arcs contain weights • Activations represent soft booleans; range from 0.0 to 1.0 • Weights represent excitatory and inhibitory connections; roughly symmetric about 0 • At run-time, we do a “forward pass” which computes activation from inputs to hiddens, and then to outputs • From outside, app only sees input nodes and output nodes
1 F(X) = -x e + 1 logistic function Neural Network Forward Pass 1.0 -2.3 1.4 Features computed from ink 1.0 0.1 Probability estimates of letters -0.1 0.6 0.0 0.0 0.8 -0.8 0.0 0.7 Inputs Outputs Hiddens act = F(Σ(in × weight) + bias)
Neural Network Training 1.0 -2.3 1.4 1.0 0.1 -0.1 0.6 0.0 0.0 0.8 -0.8 0.0 0.7 Inputs Outputs Hiddens Start with a fixed architecture, and a random set of weights Iterate randomly through training samples For each training sample, do forward pass, and compute error of each output (size and direction) Compute what change in individual weights (size and direction) would lead to reducing each output error Reduce the change to a small fraction Repeat this walk through the training samples over and over, in different random orders
C ExampleForward Pass float Logistic(float in) { return 1.0 / ((float)exp((double)-in) + 1.0); } void Forward(LAYER *pLayer) { int i; for (i = 0; i < pLayer->cActivations; i++) { int j; float in = pLayer->Biases[i]; for (j = 0; j < pLayer->cInputs; j++) { in += pLayer->Inputs[j] * pLayer->Weights[i][j]; } pLayer->Activations[i] = Logistic(in); } } LAYER: int cActivations; float Activations[]; float Biases[]; float Weights[]; int cInputs; float Inputs[]; (all squares are floats)
TDNN: Time Delayed Neural Network item 6 item 4 item 5 item 1 item 2 item 3 item 1 • This is still a normal back-propagation network • All the points in the previous several slides still apply • The difference is in the connections • Connections are limited • Weights are shared • The input is segmented, and the same features are computed for each segment • Small detail: edge effects • For the first two and last two columns, the hidden nodes and input nodes that reach outside the range of our input receive zero activations
Segmentation tops bottoms tops and bottoms midpoints going up
Training • We use back-propagation training • We collect millions of words of ink data from thousands of writers • Young and old, male and female, left handed and right handed • Natural text, newspaper text, URLs, email addresses, numeric values, street addresses, phone numbers, dates, times, currency amounts, etc. • We collect in more than two dozen languages around the world • Training on such large databases takes weeks • We constantly worry about how well our data reflect our customers • Their writing styles • Their text content • We can be no better than the quality of our training sets • And that goes for our test sets too • We are teaching the computer to read
Recognizer Architecture Ink Segments Top 10 List TDNN dog 68 clog 57 dug 51 doom 42 Output Matrix divvy 37 a 88 8 68 22 63 57 4 Lexicon ooze 35 b … 23 4 61 44 57 57 4 Beam Search … … cloy 34 a d g 57 a 00 … o 92 81 51 9 47 20 14 g doxy 29 e o 12 b 13 31 8 2 14 3 3 l b 00 t 12 b t … client 22 l 07 c b 6 g c 00 a 71 12 52 8 79 90 90 t dozy 13 a h a 73 d 17 17 5 7 43 13 7 t 5 o d 00 … g … e o 09 n … 7 18 57 28 57 6 5 g 68 t o 53 16 79 91 44 15 12 t 8
Maintaining Ambiguity • TDNN does NOT tell us which letter it is • At least not in a definite answer • Instead it tells us probability estimates for each and every character that it might be • The same shape might be different pieces of different letters • It is important to keep all theories alive for now • So we can decide later, after we add in more information from the language model • I suppose “maintaining ambiguity” is a euphemism for procrastinating
Error Correction: SetTextContext() Goal: Better context usage for error correction scenarios • User writes “Dictionary” • Recognizer misrecognizes it as “Dictum” • User selects “um” and rewrites “ionary” • TIP notes partial word selection, puts recognizer into correction mode with left and right context • Beam search artificially recognizes left context • Beam search runs ink as normal • Beam search artificially recognizes right context • This produces “ionary” in top 10 list; TIP must insert this to the right of “Dict” 1. Dictum 2. Dictum 3. 4. Right Context Left Context “Dict” “” a 0 b 0 e 0 a 57 c 0 c 100 t 100 i 85 i 100 d 100 o 72 6. n 5 a 0 5. 7.
Language Model • We get better recognition if we bias our interpretation of the output matrix with a language model • Better recognition means we can handle sloppier cursive • You can write faster, in a more relaxed manner • The lexicon (system dictionary) is the main part • But there is also a user dictionary • And there are regular expressions for things like dates and currency amounts • We want a generator • We ask it: “what characters could be next after this prefix?” • It answers with a set of characters • We still output the top letter recognitions • In case you are writing a word out-of-dictionary • You will have to write more neatly
Lexicon d Simple node u UK A Leaf node (end of valid word) C s e r s UK UK UK A s A A C C C U.S. only US s U.K. only UK UK 4125 n a l y A Australian only C A Canadian only a C … d US 4098 Unigram score (log of probability) 1234 … z e r s b … US US US g o s t US l r s c US US o l o u r s UK UK b A A C C a a t d 3159 o g e 3463 3354 t 4125 r u n n t h e a t e r s 952 US 3606 US 4187 r e s T H C US w a l k i n g
Offensive Words • The lexicon includes all the words in the spellchecker • The spellchecker includes obscenities • Otherwise they would get marked as misspelled • But people get upset if these words are offered as corrections for other misspellings • So the spellchecker marks them as “restricted” • We live in an apparently stochastic world • We will throw up 6 theories about what you were trying to write • If your ink is near an obscene word, we might include that • Dilemma: • We want to recognize your obscene word when you write it • Otherwise we are censoring, which is NOT our place • We DON’T want to offer these outputs when you don’t write them • Solution (weak): • We took these words out of the lexicon • You can still write them, because you can write out-of-dictionary • But you have to write very neat cursive, or nice handprint • Only works at the word level • Can’t remove words with dual meanings • Can’t handle phrases that are obscene when the individual words are not
Regular Expressions • Many built-in, callable by ISVs, web pages • Number, digit string, date, time, currency amount, phone number • Name, address, arbitrary word/phrase list • URL, email address, file name, login name, password, isolated character • Many components of the above: • Month, day of month, month name, day name (of week), year • hour, minute, second • Local phone number, area code, country code • First name, last name, prefix, suffix • street name, city, state or province, postal code, country • None: • Yields an out-of-dictionary-only system (turns off the language model) • Great for form-filling apps and web pages • Accuracy is greatly improved • Use SetFactoid() or SetInputScope() • This is in addition to the ability to load the user dictionary • One could load 500 color names for a color field in a form-based app • Or 8000 drug names in a prescription app • On 2000 stock symbols
Regular Expressions • A simple regular expression compiler is available at run time • ISVs can add their own regular expressions • One could imagine the DMV adding automobile VINs • Blood pressure example: • (!IS_DIGITS)/(!IS_DIGITS) p(!IS_DIGITS) • Latitude example: • (!IS_DIGITS)°((!IS_TIME_MINORSEC)’((!IS_TIME_MINORSEC)”)+)+ (N|S) http://msdn.microsoft.com/library/default.asp?url=/library/en-us/tpcsdk10/lonestar/inkconcepts/custominputscopeswithregex.asp
Default Factoid • Used when no factoid is set • Intended for natural text, such as the body of an email • Includes system dictionary, user dictionary, hyphenation rule, number grammar, URL grammar • All wrapped by optional leading punctuation and trailing punctuation • Hyphenation rule allows sequence of dictionary words with hyphens between • Number grammar includes actual numbers, plus: • dates, times, currency amounts, telephone numbers, percents, numeric ranges, ordinal abbreviations, number-unit combinations, Roman numbers • Alternatively, can be a single character (any character supported by the system) SysDict UserDict Leading Punc Hyphenation Trailing Punc Start Final Numeric Web Single Char
Calligrapher • The Russian recognition company Paragraph sold itself to SGI (Silicon Graphics, Incorporated), who then sold it to Vadem, who sold it to Microsoft. • In the purchase we obtained: • Calligrapher • Cursive recognizer that shipped on the first Apple Newton (but not the second) • Transcriber • Handwriting app for handheld computers (shipped on PocketPC) • Calligrapher has a very similar architecture • Instead of a TDNN it employs a hand-built HMM • The lexicon and beam search are similar in nature (many small differences) • We combined our system with Calligrapher • We use a voting system (neural nets) to combine each recognizer’s top 10 list • They are very different, and make different mistakes • We get the best of both worlds • If either recognizer outputs a single-character “word” we forget these lists and run the isolated character recognizer
Personalization: Ink Shape • Simple concept: just do same training on this customer’s ink • Start with components already trained on massive database of ink samples • Train further on specific user’s ink samples • Explicit training • User must go to a wizard and copy a short script • Do have labels from customer • But limited in quantity, because of tediousness • Implicit training • Data is collected in the background during normal use • We get more data • But it doesn’t have labels verified by the customer • We protect ourselves from mislabeled data using our internal confidence measure and a pipeline of quarantined stores • Much of the work is in the infrastructure: • GUI, database, management of different user’s trained networks, etc.
Personalization: Text Harvesting • Simple concept: just add the user’s new words to the lexicon • Examples (at Microsoft): • RTM, dev, SDET, dogfooding, KKOMO, featurization • We scan Outlook for outgoing email (avoids spam), outgoing appointments, notes, tasks, and contacts (names, email addresses) • We scan Internet Explorer history for URLs • Natural text goes through the Indexing Service word breaker • Strips punctuation, quotes, etc. • We support add-to-dictionary and remove-from-dictionary, from within the TIP • We also run a post-processor based on frequent correction pairs
Personalization: Vista • East Asian Recognizers: • Chinese (simplified and traditional), Japanese, Korea • Explicit and Implicit Personalization • No text harvesting • Because no lexicon used in recognition • Dr. Qi Zhang, Dr. John Drakopoulos, Michael Black • English Recognizers • US and UK • Explicit Personalization and text harvesting • No implicit personalization • Dr. Michael Revow, Dr. Dave Stevens, David Winkler, Rick Sailor, Brian Leung, Nick Strathy
Vista: Recognition Error Reporting • Button in the TIP • Start menu • Dr. Jamie Eisenhart
Languages: Vista • Previous to Vista, we shipped: • English (US), English (UK), French, German, Spanish, Italian • Using a completely different approach, we also shipped: • Japanese, Chinese (Simplified), Chinese (Traditional), Korean • All of the above have improved accuracy in Vista • Latin recognizers are significantly better on URLs • EA recognizers are significantly better on cursive • And some will have personalization • Vista adds: • Dutch, Portuguese (for Brazil) • Yours truly
Future Languages • We have done some initial work in: • Swedish, Danish, Norwegian, Finnish, Serbian (Latin and Cyrillic) • We ship based on quality, so we don’t tie to specific releases • We have started initial research in roughly a dozen more • Some in the Latin script and some in other scripts • My research goal is to speed the development of new languages
Additional Latin Script Languages • Accents • We already handle acute, grave, dieresis, circumflex • Ring over vowels (Danish, Norwegian, Swedish, Finnish, Czech) • Double acute (Hungarian) • Hacek (caron) on consonants (Czech, Slovak, Slovene, Estonian, Latvian, Lithuanian) • Cedilla under consonants (Romanian, Croatian, Serbian in Latin, Catalan, Turkish, Latvian) • Ogonek under vowels (Polish, Lithuanian) • Dot over letter (Polish, Lithuanian, Maltese) • Macron over vowels (Latvian, Lithuanian, Maori) • Breve over letters (Romanian, Turkish) • Others: • ø (Danish, Norwegian) ł (Polish) ŀl (Catalan) ð þ (Icelandic) ħ (Maltese) • Dotted capital I and dotless lowercase i (Turkish) • Quotes • “high quotes” (English, Spanish, Portuguese, Modern Dutch, Turkish, Catalan, Galician, Welsh, Zulu, Malay) • „low quotes“ (German, Polish, Czech, Romanian, Croatian, Serbian, Hungarian, Slovak) • ”left-facing quotes” (Danish, Norwegian, Swedish, Finnish) • « chevron quotes » (French) • Numbers • 1,234,567.89 (English, some former British colonies) • 1 234 567,89 (Swedish, Norwegian, Finnish, Czech, Slovak, Hungarian, Lithuanian, Latvian, Estonian) • 1 234 567,89 or 1.234.567,89 (French, Italian, Polish, Slovene) • 1.234.567,89 (everyone else)
Best Job at Microsoft • Bill Gates makes more money, but I have more fun • I remember senior people at several research institutions calling cursive recognition “waste of time and money” • Some find it recognizes their writing when no one else can • But I also know there are others who get poor recognition • I wonder if Gary Trudeau has tried it • People will adapt to a recognizer, if they use it enough • Just as they adapt to the people they live with and work with • My physician in Issaquah gets perfect recognition on a Newton • Biggest complaints: • No adaptation to my handwriting style (coming in Vista) • We don’t yet ship their language (I’m working on it) • Other complaints: • Weak on URLs (much better in Vista), email addresses, slashes, some styles of handprint (all better in Vista) • East Asian weak on cursive (much better in Vista)
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