Image Processing Reference
In-Depth Information
tidocument processing will gain the same benefit. Third, this study demonstrates that the ex-
tracted anecdotes truly depict the implicit content of the news, which enhance understanding
the picture.
Results showed that this method achieves a significant precision rate and gains high accept-
ance from experts and users. The performance testing was also very promising. The proposed
model, along with the empirical findings, sheds new light on AIA.
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