Object Localization In Computer Vision.
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University of Tlemcen
Abstract
In this work, we have introduced the computer vision discipline that includes several tasks, such as object recognition, segmentation and detection. solving the object localization task usually needs a set of features such as HAAR cascade or HOG these features
must change according to the type of the localized object and this create an additional
overhead. With the arrival of deep learning era it will be possible to both learn the representation subproblem (feature extraction) and the regression/classification subproblem.
We leverage the concepts offered by deep learning and use them to tackle our localization
problem which consists of recognizing the category of the main object (in our case cat
or dog), in addition to the drawing of a bounding box around the detected object. our
model mainly consists of a feature extractor termed Xception and a set of dense layers
that capture the categories and the bounding box. We also notice that the proposed
model has achieved a classification rate of 100% and an IoU rate of 78% on the validation
dataset.
As a perspective of this work, we can compare our results with more elaborated feature
extractors such as SeNet,ResNet; Additionally, we can extend the presented model to
tackle the detection task which assume that the image contains several objects of different classes
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