Open Access Open Access  Restricted Access Subscription or Fee Access

Augmented Reality Based Cut Paste

Sahil Parange, Snehal Parange, Tejal Gaykar, Vaishali Jadhav

Abstract


The AR Copy Paste app allows you to digitalize the real-world around us. This application does not use the standard copying-image method. It uses a single application, which uses Augmented Reality and Machine Learning to discover different objects in the environment and attach them to computer image editing software directly. The app then removes the background and saves the item itself. This technology will make designers' jobs lot easier since they will be able to aim their phones' cameras at the object and copy-paste it onto their PCs rather than taking a picture, editing it, and adding the cut on the PC. Augmented reality (AR) is the sensible incorporation of a certifiable environment in which the objects that remain inside the world are updated by PC produced perceptual information, occasionally over multiple tangible modalities, including visual, hear-able, haptic, somatosensory, and olfactory. AR is routinely described as a system that satisfies three fundamental features: a mix of veritable and virtual universes, continuous association, and accurate 3D enrolment of virtual and veritable articles. The overlaying physical data may be advantageous (for instance, adding substance to the native habitat) or dreadful (for example veiling of the regular environment). This contribution is reliably intertwined with the actual world such it is viewed as a vivid point of the indispensable environment. In human-PC communication and connection point plan, cut, copy and paste are connected orders that give a between cycle specialized strategy for trading data through a computer’s interface. The cut order clears the picked data from its exceptional position, while the copy order makes a duplicate; in the two cases, the picked data is kept in temporary limit (the clipboard). The data from the clipboard is a while later implanted at any place a paste order is issued. The data remains available to an application supporting the feature, in this way allowing basic data trade between applications. With present day advancements in AI, it is feasible to identify individuals and articles around us precisely, eliminate the foundation consequently and move the outcome to a PC. Until now, AR had been used to wander high level pictures into the certifiable world. However, the AR Cut and Copy application inverts the cycle and brings physical things into the computerized world

Full Text:

PDF

References


Dwibedi D, Misra I, Hebert M. Cut, paste and learn: Surprisingly easy synthesis for instance detection. In Proceedings of the IEEE international conference on computer vision. 2017; 1301–1310

Chen Q, Liu T, Shang Y, Shao Z, Ding H. Salient object detection: Integrate salient features in the deep learning framework. IEEE Access. 2019 Oct 17; 7: 152483–92.

Rhee KH. Detection of spliced image forensics using texture analysis of median filter residual. IEEE Access. 2020 Jun 2; 8: 103374–84.

Zhang X, Lei ZH. Fast salient object detection based on multi-scale feature aggression. In 2019 IEEE Chinese Control and Decision Conference (CCDC). 2019 Jun 3; 5734–5738.

Lee LH, Zhu Y, Yau YP, Hui P, Pirttikangas S. Press-n-Paste: Copy-and-Paste Operations with Pressure-Sensitive Caret Navigation for Miniaturized Surface in Mobile Augmented Reality. Proc

ACM Hum-Comput Interact. 2021 May 27; 5(EICS): 1–29.

Dubois E, Nigay L. Augmented reality: which augmentation for which reality? In Proceedings of DARE 2000 on Designing augmented reality environments. 2000 Apr 1; 165–166.

GitHub. AR Cut & Paste. [Online]. Available from https://github.com/cyrildiagne/ar-cutpaste

Höllerer T, Feiner S. Mobile augmented reality. In: Telegeoinformatics: Location-based computing and services. Taylor & Francis Books Ltd.; 2004 Mar; 221–260.

Carmigniani J, Furht B, Anisetti M, Ceravolo P, Damiani E, Ivkovic M. Augmented reality technologies, systems and applications. Multimed Tools Appl. 2011 Jan; 51(1): 341–77.

Lamberti F, Manuri F, Sanna A, Paravati G, Pezzolla P, Montuschi P. Challenges, opportunities,and future trends of emerging techniques for augmented reality-based maintenance. IEEE TransEmerg Topics Comput. 2014 Dec; 2(4): 411–21.


Refbacks

  • There are currently no refbacks.