Image inpainting and object detection are two well-established research areas with significant real-world applications in computer vision, digital forensics, media editing, and augmented reality. Image inpainting is a technique used to restore missing, distorted, or removed sections of an image, often to recreate its original appearance. It can also be applied to remove objects from an image while reconstructing the background in a visually coherent manner. Traditional inpainting methods relied on manual editing or simple interpolation techniques, whereas modern deep learning-based approaches utilize convolutional neural networks (CNNs) and generative adversarial networks (GANs) to achieve realistic results. Object detection, on the other hand, involves identifying and localizing specific objects, such as people, buildings, or vehicles, within digital images and videos. This paper presents a system that integrates object detection with image inpainting to automate object removal and image restoration. By detecting an object and applying advanced inpainting techniques, the system seamlessly reconstructs the image without noticeable artifacts. The proposed approach has broad applications in image editing, surveillance, content moderation, and privacy protection, providing an effective and automated solution for object removal and background restoration.
Singh et al. (Sat,) studied this question.
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