Ex Parte Gillick et alDownload PDFPatent Trial and Appeal BoardAug 31, 201713338383 (P.T.A.B. Aug. 31, 2017) Copy Citation United States Patent and Trademark Office UNITED STATES DEPARTMENT OF COMMERCE United States Patent and Trademark Office Address: COMMISSIONER FOR PATENTS P.O.Box 1450 Alexandria, Virginia 22313-1450 www.uspto.gov APPLICATION NO. FILING DATE FIRST NAMED INVENTOR ATTORNEY DOCKET NO. CONFIRMATION NO. 13/338,383 12/28/2011 Laurence Gillick 30054-003001 5872 69713 7590 09/05/2017 OCCHIUTI & ROHLICEK LLP 321 Summer St. Boston, MA 02210 EXAMINER HONG, THOMAS J ART UNIT PAPER NUMBER 3715 NOTIFICATION DATE DELIVERY MODE 09/05/2017 ELECTRONIC Please find below and/or attached an Office communication concerning this application or proceeding. The time period for reply, if any, is set in the attached communication. Notice of the Office communication was sent electronically on above-indicated "Notification Date" to the following e-mail address(es): INFO @ORP ATENT.COM PTOL-90A (Rev. 04/07) UNITED STATES PATENT AND TRADEMARK OFFICE BEFORE THE PATENT TRIAL AND APPEAL BOARD Ex parte LAURENCE GILLICK, ALAN SCHWARTZ, JEAN-MANUEL VAN THONG, PETER WOLF, and DON MCALLASTER Appeal 2015-001023 Application 13/338,383 Technology Center 3700 Before JOHN C. KERINS, GEORGE R. HOSKINS, and BRANDON J. WARNER, Administrative Patent Judges. KERINS, Administrative Patent Judge. DECISION ON APPEAL STATEMENT OF THE CASE Laurence Gillick et al. (Appellants) appeal under 35 U.S.C. § 134(a) from a final rejection of claims 1—14. We have jurisdiction under 35 U.S.C. § 6(b). We REVERSE. Appeal 2015-001023 Application 13/338,383 THE INVENTION Appellants’ invention is directed to a method for automated processing of speech in a speech training system. Claim 1, reproduced below, is illustrative: 1. A method for automated processing of a user’s speech in a speech training system, the method comprising: accepting a data representation of a user’s speech; and processing the data representation of the user’s speech according to a statistical model, said model comprising model parameters associated with each of a plurality of speech units, the model parameters associated with at least some of the speech units including parameters associated with target instances of the speech unit and parameters associated with non-target instances of the speech unit; wherein the processing includes determining quantities characterizing degrees of match of the data to speech units represented in the statistical model and determining an aggregated measure of one or more classes of speech errors in the user’s speech from the determined quantities. REJECTIONS The Examiner rejects: (i) claims 1, 3—6, 11, 13, and 141 under 35 U.S.C. § 103(a) as being unpatentable over Faisman (US 2006/0161434 Al, published July 20, 2006) in view of Yu (US 2009/0258333 Al, published Oct. 15, 2009); and 1 Claim 14 is not listed in the initial statement of the rejection, but is addressed in the body of the rejection. We regard the initial omission as a harmless error. 2 Appeal 2015-001023 Application 13/338,383 (ii) claims 2, 7—10, and 12 under 35 U.S.C. § 103(a) as being unpatentable over Faisman in view of Yu and Johnson (US 2009/0004633 Al, published Jan. 1, 2009). OPINION Claims 1, 3—6, 11, 13, and 14—Unpatentability over Faisman and Yu The Examiner states, with respect to independent claims 1,11, and 13, that “Faisman discloses a method/system/tangible machine readable medium for automated processing of a user’s speech in a speech training system.” Final Act. 3. The Examiner acknowledges that Faisman does not disclose that the processing includes “determining quantities characterizing degrees of match of the data to speech units represented in the statistical model and determining an aggregated measure of one or more classes of speech errors in the user’s speech from the determined quantities.” Id. The Examiner turns to Yu as teaching a statistical model to analyze the learner’s input, and as teaching that the likelihood of matching between the input and the model speech is quantified. Final Act. 3—4, citing Yu, para. 47,11. 11—12, para. 49,11. 6—11. The Examiner additionally finds that paragraph 10 of Yu “teaches how the calculated quantities are converted to scores for determination.” Id. at 4. The Examiner then concludes that it would have been obvious to modify Faisman, presumably to incorporate these features from Yu, “to improve techniques related to machine based spoken language learning.” Id., citing Yu, paras. 2, 4. Appellants argue, inter alia, that the Examiner “has not identified how specifically any degree of match to text units ... is taught in Yu,” such that the teachings could be reasonably incorporated into Faisman. Br. 6. Appellants also assert that the Examiner “has failed to identify any specific 3 Appeal 2015-001023 Application 13/338,383 ‘aggregate measure’ in Yu that is based on Yu’s purported ‘degree of match’ quantities for text units.” Id. The Examiner does not respond to these specific points in the Answer. The Examiner does identify, in an Advisory Action dated November 27, 2013, additional portions of the Yu reference where certain claim terms and/or terms used in Appellants’ arguments can be found. The Examiner fails to explain adequately how Faisman is to be modified in view of the teachings of Yu, or how such modifications will improve, in Faisman, “techniques related to machine based spoken language learning,” the reason articulated by the Examiner for making such modifications. Final Act. 4. At the outset, we note that the underlying premise of the Examiner’s rejection, i.e., that Faisman is directed to a speech training system, is flawed. The Examiner points to the Abstract of Faisman as evidencing this to be the purpose of the Faisman system, however, the Abstract simply refers to the provision of a method for improving spoken language. The remainder of the Faisman disclosure evidences that the improvement sought is not that of training the user to improve his or her spoken language capabilities, but rather a correction of detected errors in a person’s speech (converted to and processed as text data) to produce an improved text and/or speech output to other readers/listeners. Faisman, paras. 19, 20. As such, although possible, it is not readily apparent how the proposed modification(s) are even applicable to the operation of the Faisman system, let alone how they would improve the operation of Faisman. The discussion of Yu presented in the rejection further appears to simply point to passages in Yu that incidentally use the same or similar terminology as do 4 Appeal 2015-001023 Application 13/338,383 Appellants’ claims, without adequate analysis as to how these aspects of the Yu system would improve the Faisman system, as asserted in the rejection. Independent claim 14 includes a processing step of determining a confidence measure of the speaker exhibiting a class of speech errors, and determining if the confidence measure exceeds a threshold. Final Act. 5—6. The Examiner cites to passages in Yu that are said to teach these limitations, but again, the Examiner has not adequately explained the possible relevance of these features to the Faisman system. The articulated reason for making the modification, namely to improve techniques related to machine based spoken language learning, does not have a clear nexus to the Faisman system, which is not a language training system. Accordingly, we do not sustain the rejection of claims 1, 3—6, 11, 13, and 14 as being unpatentable over Faisman and Yu. Claims 2, 7—10, and 12—Unpatentability over Faisman, Yu, and Johnson The Examiner does not rely on Johnson in any manner that would appear to overcome the deficiencies noted above with respect to the proposed combination of Faisman and Yu. We do not sustain the rejection of claims 2, 7—10, and 12 as being unpatentable over Faisman, Yu, and Johnson. DECISION The rejections of claims 1—14 under 35 U.S.C. § 103(a) are reversed. REVERSED 5 Copy with citationCopy as parenthetical citation