Abstract
Object Recognition Using AI is a pioneering concept at the crossroads of artificial intelligence and computer vision, devoted to automating the identification and localization of objects within images and video streams. This paradigm harnesses machine learning algorithms to emulate human visual cognition, empowering systems to discern and precisely pinpoint diverse objects, transcending traditional image analysis. The essence of Object Recognition Using AI lies in its transformative impact across a multitude of applications. In retail, it revolutionizes inventory management by autonomously recognizing products on shelves. Within the security domain, it enhances surveillance systems, enabling real-time tracking of individuals and objects. In the automotive landscape, it empowers self-driving vehicles to interpret their surroundings, safeguarding passengers and pedestrians alike. Our research endeavors to advance the field of object recognition through the implementation of Mask R-CNN, a state-of-the-art deep learning architecture. We aim to achieve highly accurate object detection and segmentation by leveraging the power of convolutional neural networks. In pursuit of this, we conducted comprehensive experiments and evaluations. Our results showcase the effectiveness of Mask R-CNN in various real-world scenarios, with impressive precision and recall rates. In conclusion, this study contributes valuable insights and tools to the realm of computer vision, enabling enhanced object recognition applications. Keywords:Object Recognition, Mask R-CNN, Deep Learning, Convolutional Neural Networks, Computer Vision.
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