A review and an approach for object detection in images

@article{Sharma2017ARA,
  title={A review and an approach for object detection in images},
  author={Kartik Umesh Sharma and Nileshsingh V. Thakur},
  journal={Int. J. Comput. Vis. Robotics},
  year={2017},
  volume={7},
  pages={196-237}
}
An object detection system finds objects of the real world present either in a digital image or a video, where the object can belong to any class of objects namely humans, cars, etc. In order to detect an object in an image or a video the system needs to have a few components in order to complete the task of detecting an object, they are a model database, a feature detector, a hypothesiser and a hypothesiser verifier. This paper presents a review of the various techniques that are used to… 

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