Speech playback (e.g., TV, radio, public address) becomes harder to
understand in the presence of noise and reverberation. NELE (Near End
Listening Enhancement) algorithms can improve intelligibility by modifying
the signal before it is played back. Substantial intelligibility improvements
have been achieved in the lab for both natural and synthetic speech.
However, evidence is still scarce on how these algorithms work under
conditions of realistic noise and reverberation.
We present a realistic
test platform, featuring two representative everyday scenarios in which
speech playback may occur (in the presence of both noise and reverberation):
a domestic space (living room) and a public space (cafeteria). The
generated stimuli are evaluated by measuring keyword accuracy rates
in a listening test with normal hearing subjects.
We use the new platform
to compare three state-of-the-art NELE algorithms, employing either
noise-adaptive or non-adaptive strategies, and with or without compensation
for reverberation.