A Simple and efficient deep Scanpath Prediction
- URL: http://arxiv.org/abs/2112.04610v1
- Date: Wed, 8 Dec 2021 22:43:45 GMT
- Title: A Simple and efficient deep Scanpath Prediction
- Authors: Mohamed Amine Kerkouri, Aladine Chetouani
- Abstract summary: We explore the efficiency of using common deep learning architectures, in a simple fully convolutional regressive manner.
We experiment how well these models can predict the scanpaths on 2 datasets.
We also compare the different leveraged backbone architectures based on their performances on the experiment to deduce which ones are the most suitable for the task.
- Score: 6.294759639481189
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Visual scanpath is the sequence of fixation points that the human gaze
travels while observing an image, and its prediction helps in modeling the
visual attention of an image. To this end several models were proposed in the
literature using complex deep learning architectures and frameworks. Here, we
explore the efficiency of using common deep learning architectures, in a simple
fully convolutional regressive manner. We experiment how well these models can
predict the scanpaths on 2 datasets. We compare with other models using
different metrics and show competitive results that sometimes surpass previous
complex architectures. We also compare the different leveraged backbone
architectures based on their performances on the experiment to deduce which
ones are the most suitable for the task.
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