文本和语言识别
使用 TextRecognize,可以从图像中提取代表给定语言文本的字符串.
In[1]:=
text = TextRecognize[\!\(\*
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AbYLlUk=
"], {{0, 275}, {434, 0}}, {0, 255},
ColorFunction->GrayLevel],
BoxForm`ImageTag[
"Byte", ColorSpace -> "Grayscale", Interleaving -> None],
Selectable->False],
BaseStyle->"ImageGraphics",
ImageSize->Magnification[0.5],
ImageSizeRaw->{434, 275},
PlotRange->{{0, 434}, {0, 275}}]\), Language -> "German"]
Out[1]=
通过使用 LanguageIdentify,可以确认此内容为德语.
In[2]:=
LanguageIdentify@text
Out[2]=