What are the advantages of deep learning–based speech recognition algorithms?
A.
Forced alignment of annotated data
B.
Automated feature extraction
C.
End-to-end task processing
D.
No data training
The Answer Is:
B, C
This question includes an explanation.
Explanation:
Deep learning–based speech recognition offers two key advantages over traditional approaches:
Automated feature extraction (B):Neural networks can directly learn features from raw or lightly processed audio without manual engineering of MFCCs or filter banks.
End-to-end task processing (C):Models like CTC-based networks or attention-based architectures can map audio inputs directly to text outputs without intermediate models like GMM-HMM.
Options A and D are incorrect because forced alignment is part of traditional GMM-HMM systems, and deep learning still requires training with large datasets.
Exact Extract from HCIP-AI EI Developer V2.5:
"Deep learning models support automatic feature extraction and can implement end-to-end mapping from speech signals to text outputs."
[Reference:HCIP-AI EI Developer V2.5 Official Study Guide – Chapter: End-to-End Speech Recognition, ]
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