More than 100 hours of radar data and utterance from controller pilot communication for Vienna and for Prague approach area were recorded (WP2). 20% of these speech recordings were manually transcribed, i.e. an ATC experts listens to the controller pilot communication and writes down word by word what was said and what are the ATC relevant elements: “good morning” e.g. is not important. We need to know the callsign, whether we have a DESCEND or a REDUCE command and the command value e.g. 8000 feet or 220 knots. All in all we transcribed four hours without silence for both Vienna and Prague.
An initial basic ABSR was set-up for both Prague and also for Vienna (WP3). MALORCA achieved a command recognition rate of approximately 80% (Prague) respectively 60% (Vienna). We added then 25% of the untranscribed data to improve the models through machine learning framework. The system performance has significantly increased. We have then plugged in another set of untranscribed data (to reach 50%, 75% and 100% of the total set) in order to emulate the learning effect on monthly basis. Command recognition rates have eventually increased to 92% (Prague) respectively 83% (Vienna).
The performance of the trained ABSR system was evaluated on proof-of-concept trials by nine controllers in Vienna and Prague in end of January 2018 (WP5). These trials overstep the initial objective and allow the end-users, the controllers, to put their hands on the live-mode platform with basic HMI. The performed work does not cover only the objectives of MALORCA projects to develop a basic adaptable ABSR system and to improve it by unsupervised learning, but it goes beyond and provides the clear heritage of MALORCA project to SESAR2020 project PJ.16-04. Received feedback of end-users together with an Operational Concept Document and System Requirement Specification from WP1 clearly specifies controllers’ preferences in the domain of speech recognition.
Several new challenges were tackled in MALORCA
- 8 kHz sampling rate, instead 16 kHz
- very noisy speech environment (i.e. low speech to noise ratio)
- high deviations of ATC controllers from standard phraseology
- relatively small amount of in-domain data available (i.e. recordings from controller pilot communication). Currently 45 hours of speech recordings are available. For comparison, Google’s speech recognizer is based on 300,000 hours of speech samples.
- dealing with some data elements which do deviate from the expectations the grant/proposal was based on
- experts from ATM industry and research as well as from ATM and Speech Recognition come together speaking different domain languages.
More information:
http://www.malorca-project.de(odnośnik otworzy się w nowym oknie) and
http://www.aclistant.de(odnośnik otworzy się w nowym oknie)