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6

You should check if a recognition app is installed first: PackageManager manager = context.getPackageManager(); List<ResolveInfo> infos = manager.queryIntentActivities(intent, 0); if (infos.size() > 0) { //Then there is application can handle your intent }else{ //No Application can handle your intent }


2

The coefficient array should be the same size as the original. If you look at what wavedec does, it breaks down your signal into a high and a low component using 2 filters and then decimates by a factor of 2. It then repeats this on the approximation component (low) for each level you decompose. So if you decompose at one level, you simply pass your ...


2

Seems like Chrome broke recently. I had code working, now its not. https://code.google.com/p/chromium/issues/detail?id=582455 As a work-around, you can set the .voice voices = window.speechSynthesis.getVoices() var utterance = new SpeechSynthesisUtterance("lo que practico"); utterance.voice = voices[3]; utterance.lang = voices[3].lang; ...


2

You need to add a reference to the System.Speech assembly, then you are free to use speech like so: using System; using System.Speech; // <-- sounds like what you are using, not necessary for this example using System.Speech.Recognition; // <--- you need this namespace ConsoleApplication2 { class Program { static void Main(string[] ...


2

You could try hosting your library inside a wcf service and try making a call to the service from a locally hosted web application.


2

The reason is voice search app from google is missing on the device you are using. You can solve the problem by manually installing it on your device. But there is another way to do so. That's opening the link of the app in a webview like following try{ Intent intent = new Intent(RecognizerIntent.ACTION_RECOGNIZE_SPEECH); ...


2

Well, this is an issue with model format, this line in ngram model causes a problem: ngram 3=0 You can either remove offending line or update pocketsphinx-android-demo, I've just pushed a new version with this issue fixed. Overall, dictation on the phone is not trivial because phone is really slow. I do not recommend you to use 2-gram, it is better to ...


1

Mac comes with Python 2.7 pre-installed by Apple. and its default path is /usr/bin/python but if you install python 3 then it uses different path which is /applications/python 3 (depend on latest version 3.4 3.5 ..) so you have to install pyaudio and pip for python 3 separate open the terminal and execute: cd /Applications/Python\ 3.5 pip3 install ...


1

As of WatchOS 2.1, and iOS 9, I have been able to what you propose, in 2 different ways: OPTION 1 - RECORD WAV FILE AND UPLOAD TO ASR SERVER I recorded and saved a WAV file to the apple watch. After that I uploaded the file to a paid Speech Recognition provider and everything worked fine! Here is the code to record, replace the UI updating lines of code ...


1

On Android 6 this permission is one of dangerous ones which means you need to ask user to confirm it (actually acquire it). Check this and this for more details.


1

You need to use keyword spotting mode. Pocketsphinx supports keyword spotting mode where you can specify the keyword list to look for. The advantage of this mode is that you can specify a threshold for each keyword so that keyword can be detected in continuous speech. All other modes will try to detect the words from grammar even if you used words which are ...


1

You could use ffmpeg. You can call it from python. See here : subprocess-call-ffmpeg-command-line Then you can temporary write your audio file, before analyzing it.


1

String s = result.get(0); if (s.equals("speedometer") ){ Intent intent = new Intent(getApplicationContext(), SpeedometerTest.class); startActivity(intent, ActivityOptions.makeSceneTransitionAnimation(this).toBundle()); } hope it will works.


1

Use the TextView.append() method. The Argument will be appended at the end of the Editable. From Official Link : Convenience method: Append the specified text to the TextView's display buffer, upgrading it to BufferType.EDITABLE if it was not already editable. For Example : String title = bundle.getString("number1"); EditText editText = ...


1

I seems like you're first append()'ing the result, and then reading it from the EditText object and setting the text again after you append the result to the already appended text. Use only either editText.append(result) or String gotText = editText.getText() editText.setText(gotText + result)


1

n=noOfFiles for k=1:n M(k,1:length(filedata{k})) = filedata{k} end :P


1

In your code you have: Fs=8000; wavrecord(n,Fs) % records n samples at a sampling rate Fs for i=1:8000 if(abs(x(i))>t) y1(j)=x(i); j=j+1; end end It seems that instead of recording you are going to import your sound file (here for a .wave file): [y, Fs] = wavread(filename); Instead of hardcoding the 8000value you can read the length ...


1

You have a problem with Ydimension, the output should be something like (100, 99, 10), that is a set of sequences of outputs, same as features, just 1 in output. It seems your Y vector is different. Method to_categorical is not really applicable to a sequences, it expects a vector. Alternatively you can output a single vector and feed it into a dense layer ...


1

To make the answer a little bit more clear, you need to enable partial results first, and to call UNSTABLE_TEXT in a specific fashion: // When creating the intent, set the partial flag to true intent.putExtra(RecognizerIntent.EXTRA_PARTIAL_RESULTS,true); // When requesting results in onPartialResults(), the UNSTABLE_TEXT parameter to getSTtringArrayList() ...


1

From what I've garnered from the internet, I thought I've been calculating the confidence correctly. Is that incorrect? Your code is correct How can I fix it to make the output be more accurate? There are many issues leading to worse accuracy, most are not related to the code, one of them is incorrect input format. Another is bad recognition of ...


1

Is your intent to re-implement speech recognition from first principles for study? If so, check out browserify, but you'll need to refactor out the command-line component and the dependency on node-wav from within node-mfcc, just for a start... Otherwise, speech recognition in the browser in JavaScript has already been done: Pocketsphinx.js Native ...


1

You can use the answer/guidance provided here Depending on what library you are using to create your LSTM(pybrain, theano, keras), you can look through their documentation. I would recommend using Theano(Binary LSTM link) or Keras(Tutorial) for this because they are fairly simple to understand and are well documented. hope this helps.



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