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Mohak Sukhwani

Researcher at ABB Ltd

Publications -  16
Citations -  148

Mohak Sukhwani is an academic researcher from ABB Ltd. The author has contributed to research in topics: Deep learning & Automatic summarization. The author has an hindex of 4, co-authored 15 publications receiving 126 citations. Previous affiliations of Mohak Sukhwani include IBM & International Institute of Information Technology, Hyderabad.

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Story Generation from Sequence of Independent Short Descriptions.

TL;DR: A deep recurrent neural network architecture is implemented that encodes sequence of variable length input descriptions to corresponding latent representations and decodes them to produce well formed comprehensive story like summaries.
Proceedings ArticleDOI

Plantation monitoring and yield estimation using autonomous quadcopter for precision agriculture

TL;DR: A framework which performs plantation monitoring and yield estimation using the supervised learning approach, while autonomously navigating through an inter-row path of the plantation is described.
Posted Content

Sequence to Sequence Learning for Optical Character Recognition

TL;DR: The expressiveness and the learnability of long short term memory (LSTMs) in the sequence to sequence learning regime is investigated by training the network for prediction tasks in segmentation free printed text OCR by using a two step encoder-decoder approach.
Book ChapterDOI

Dynamic Narratives for Heritage Tour

TL;DR: A dynamic story generation approach for the egocentric videos from the heritage sites by selecting a series of short descriptions from the collection of pre-curated text to generate on the fly dynamic narratives of the tour.
Proceedings ArticleDOI

Monocular vision based road marking recognition for driver assistance and safety

TL;DR: A solution to generate semantically richer descriptions and instructions for driver assistance and safety by combining the results of the image pattern recognition module with the prior knowledge on traffic rules and larger context present in the video sequence is presented.