ammai_course hackpad.com

ammaicourse

Hackpads are smart collaborative documents. Join Hackpad Now. Venugopalan, et al., Sequence to Sequence Video to Text, ICCV 2015. Long short-term memory LSTM has performed good performance in some tasks, such as sequence-to-sequence task of speech and video classification. In this paper, they would like to use LSTM in video caption task, which is from video sequence input to sentence. Their model S2VT architecture is illustrated as. And for the LSTM part. For the input frame, they train RGB frames.

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ammaicourse

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Hackpads are smart collaborative documents. Join Hackpad Now. Venugopalan, et al., Sequence to Sequence Video to Text, ICCV 2015. Long short-term memory LSTM has performed good performance in some tasks, such as sequence-to-sequence task of speech and video classification. In this paper, they would like to use LSTM in video caption task, which is from video sequence input to sentence. Their model S2VT architecture is illustrated as. And for the LSTM part. For the input frame, they train RGB frames.

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The site had the following on the homepage, ", Sequence to Sequence Video to Text, ICCV 2015." I noticed that the web page said " Long short-term memory LSTM has performed good performance in some tasks, such as sequence-to-sequence task of speech and video classification." They also stated " In this paper, they would like to use LSTM in video caption task, which is from video sequence input to sentence. Their model S2VT architecture is illustrated as. And for the LSTM part. For the input frame, they train RGB frames."

SEE MORE WEB SITES

Daniel Liu Daniel Liu

Thu, Jun 9, 2016. Sequence to Sequence Video to Text. This paper mainly proposes a end-to-end method to translate videos into text descriptions. It uses CNN for feature extraction and LSTM for encoding and decoding of the features and word representations. The hyper-parameter alpha is tuned on the validation set. Wed, May 25, 2016. Deep Neural Networks for Acoustic Modelling in Speech Recognition.

vincentweisen

AMMAI Lecture 14 Deep Learning Methods for Image Captioning. AMMAI Lecture 13 Deep Learning Methods for Speech. AMMAI Lecture 12 Deep Learning Methods for Text. Jen-Hao Hsiao, Yahoo! May 18, 2016.