2019
DOI: 10.14738/aivp.75.6946
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A MASK-RCNN Based Approach Using Scale Invariant Feature Transform Key points for Object Detection from Uniform Background Scene

Abstract: Object identification using deep learning in known environment gives a new dimension to the research area of computer vision based automation system. As it uses supervised learning technique using Convolution Neural Network (RCNN) it helps automation software tools and machines to detect and identify objects using vision based systems. One of RCNN technique known as Mask-RCNN has been applied in this proposed design and this paper presents a novel approach to object detection problem using Big Data storage for… Show more

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“…Taking the official currency of Singapore as an example, Prasasti AL [22] proposed a foreign currency identification method based on the improved SIFT algorithm based on ANDROID. Dalai R et al introduced the SIFT algorithm into the Mask-R-Convolution Neural Network (Mask-RCNN) to extract and match the feature points of the image, thereby realizing image processing and fast detection of objects in the image [23]. Karim A et al proposed an Arabic handwriting recognition model combining SIFT and SVM.…”
Section: Related Workmentioning
confidence: 99%
“…Taking the official currency of Singapore as an example, Prasasti AL [22] proposed a foreign currency identification method based on the improved SIFT algorithm based on ANDROID. Dalai R et al introduced the SIFT algorithm into the Mask-R-Convolution Neural Network (Mask-RCNN) to extract and match the feature points of the image, thereby realizing image processing and fast detection of objects in the image [23]. Karim A et al proposed an Arabic handwriting recognition model combining SIFT and SVM.…”
Section: Related Workmentioning
confidence: 99%