Abstract
Classifying moving objects in video surveillance can be difficult, and it is challenging to classify hard and soft objects with high Accuracy. Here rigid and non-rigid objects are limited to vehicles and people. CNN is used for the binary classification of rigid and non-rigid objects. A deep-learning system using convolutional neural networks was trained using python and categorized according to their appearance. The classification is supplemented by the use of a data set, which contains two classes of images that are both rigid and not rigid that differ by illuminations.
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CITATION STYLE
Gullapelly, A., & Banik, B. G. (2021). Classification of rigid and non-rigid objects using CNN. Revue d’Intelligence Artificielle, 35(4), 341–347. https://doi.org/10.18280/ria.350409
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