تشخیص احساسات از سیگنال های گفتار براساس روش های فیلتر
محورهای موضوعی : انرژی های تجدیدپذیرنرجس یزدانیان 1 , حمید محمودیان 2
1 - کارشناس ارشد - دانشکده مهندسی برق، واحد نجفآباد، دانشگاه آزاد اسلامی، نجفآباد، ایران
2 - دانشکده برق، واحد نجف آباد، دانشگاه آزاد اسلامی
کلید واژه: روش فیلتر, انتخاب ویژگی, استخراج ویژگی, تشخیص احساسات از گفتار, ماشین بردارهای پشتیبان,
چکیده مقاله :
گفتار ابزار اولیه ارتباط بین انسان میباشد. با افزایش تراکنش میان انسان و ماشین نیاز به محاوره خودکار این دو و حذف کاربر انسانی مورد توجه قرار گرفته است.هدف از انجام این تحقیق، تعیین یک مجموعه از ویژگیهای تاثیر گذار در تشخیص احساسات مبتنی بر سیگنال صحبت میباشد. در این مقاله، سیستمی طراحی گردید که شامل سه بخش اصلی، استخراج ویژگی، انتخاب ویژگی و طبقهبندی میباشد. پس از استخراج ویژگیهای پرکاربردی چون ضرایب کپسترال فرکانسی مل (MFCC)، ضرایب پیشگویی خطی (LPC)، ضرایب پیشگویی خطی ادراکی (PLP)، فرکانس فرمنت، نرخ عبور از صفر، ضرایب کپسترال، فرکانس گام، میانگین، جیتر، شیمر، انرژی، ضرایب تبدیل فوریه، کمترین مقدار در هر پنجره، بیشترین مقدار در هر پنجره، دامنه هر سیگنال و انحراف از معیار، در مرحله بعد به کمک روشهای فیلتر چون معیار همبستگی پیرسون، آزمون t ، رلیف و بهره اطلاعاتی به انتخاب و رتبهبندی ویژگیهای تاثیرگذار در تشخیص احساسات رسیده .سپس نتایج بصورت زیرمجموعهای از ویژگیها به عنوان ورودی به یک سیستم طبقهبند داده شده است، که در این مرحله از طبقهبند ماشین بردار پشتیبان چندگانه برای طبقهبندی هفت کلاس احساسی استفاده شده است. براساس نتایج بدست آمده روش انتخاب ویژگی رلیف به همراه طبقهبند ماشین بردار پشتیبان چندگانه دارای بیشترین میزان دقت طبقهبندی برای تشخیص احساسات مورد نظر با نرخ تشخیص% 94/93 میباشد.
Abstract: Speech is the basic mean of communication among human beings.With the increase of transaction between human and machine, necessity of automatic dialogue and removing human factor has been considered. The aim of this study was to determine a set of affective features the speech signal is based on emotions. In this study system was designs that include three mains sections, features extraction, features selection and classification. After extraction of useful features such as, mel frequency cepstral coefficient (MFCC), linear prediction cepstral coefficients (LPC), perceptive linear prediction coefficients (PLP), ferment frequency, zero crossing rate, cepstral coefficients and pitch frequency, Mean, Jitter, Shimmer, Energy, Minimum, Maximum, Amplitude, Standard Deviation, at a later stage with filter methods such as Pearson Correlation Coefficient, t-test, relief and information gain, we came up with a method to rank and select effective features in emotion recognition. Then Result, are given to the classification system as a subset of input. In this classification stage, multi support vector machine are used to classify seven type of emotion. According to the results, that method of relief, together with multi support vector machine, has the most classification accuracy with emotion recognition rate of 93.94%.
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