Lately, I have developed a keen interest in the speech recognition and natural language processing domain and have been playing around with a few different approaches to build a system which can perform commands based on natural language instructions.
In my study so far, I have come across various NLP tools, but haven't been able to figure out how to utilize them for my purpose.C# is my primary language, and sadly, there is hardly anything available on the dotnet platform for NLP.
In addition to the learning curve, there are various problems with the regular NLP approach as well. Language ambiguity, named entity recognition, sentence boundary detection etc are a few points that add to the complexity. These issues are much more prominent in free form unconstrained language detection and parsing, but for a limited domain, the complexity should be reduced. However, I couldn't really overcome the challenge as most tools have huge static dictionary data or the training process is too complex.
The other major issue is about the conversational approach. Most of the tools do not handle conversational history and have no way to identify the context of the incoming instruction.
I was hoping that some of you guys who have either worked on a similar technology earlier would be able to help me iron out these challenges and point me towards the right direction.
Can you share your experience with various tools, the approaches you took, the roadblocks you faced and how you resolved them during the process.
Update: Let me also include a brief overview of what I envision. The system would essentially be a just a command executor that understands simple english. So, if I say, "send an email to john", it should understand that I want to send an email and now ask me questions to get more information about what should be the subject line and the content. Additionally, if there are more than one Johns in my address book and may be more than one email address for John, the system should be able to identify that too and ask me for further directions.
For the implementation, I think I need following components:
- Speech to text converter
- NLP engine to parse the text and identify the action and the objects on which the action is to be performed.
- An execution engine to create and co-ordinate different agents to perform the different types of actions.
The challenge lies in making the system extensible to be able to support more such actionable features at a later stage with a little modification.
I think I am fine with Speech to text part and execution part. But the pain point is the NLP engine which can understand the natural language correctly and give me exact action and parameters for it.
I have played around with POS taggers. They do not help much with the compound statements, and it gets a little tricky to establish the relationship between various verbs and nouns detected in the sentence.
Another issue is with maintaining the context of previous actions and include it making sense of the current statement.
P.S.: Convert it to a wiki if you feel appropriate. Please don't flame me for asking a generic problem.