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    <subfield code="a">Riaz, Sibgha </subfield>
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    <subfield code="a">Stitch Multiple Images for Generating Quality Panorama /</subfield>
    <subfield code="c">Sibgha Riaz</subfield>
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    <subfield code="c">2022.</subfield>
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    <subfield code="a">Stitching multiple images for achieving the 360 view of any environment is a
challenging task. Traditionally, the whole process of image stitching is based on distinctive
features that are very helpful for estimating the other parameters of the whole algorithm. As
different images require different suitable parameters or weights for achieving the best
results and we need to predict those suitable parameters for each case independently. In our
proposed model first small neural network based techniques are implemented that are just
used for estimating the quality panorama hyper parameters and then we apply the whole
stitching algorithm on sample images by using those predicted parameters.
Therefore, due to lack of labeled data we are unable to train any supervised model for
those hyper parameter selection that&#x2019;s why we build an unsupervised technique that makes
decisions based on just extracted features quality, confidence and count of inliers etc.
By estimating the good parameters we are able to stitch a quality panorama that
doesn't have any ghosting artifacts, blending discontinuities, seamless and alignment errors
as well. We evaluate the performance of our proposed model on three datasets and analyze
performance in both perspective quality and computational time and conclude that our model
outperforms with other state of the art stitching algorithms in both perspectives.</subfield>
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    <subfield code="a">MS Robotics and Intelligent Machine Engineering</subfield>
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    <subfield code="a">Supervisor :  Dr. Karam Dad Kallu</subfield>
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