A Study of Image Pre-processing for Faster Object Recognition
- URL: http://arxiv.org/abs/2011.06928v1
- Date: Sat, 31 Oct 2020 02:55:17 GMT
- Title: A Study of Image Pre-processing for Faster Object Recognition
- Authors: Md Tanzil Shahriar, Huyue Li
- Abstract summary: A good quality image gives better recognition or classification rate than any unprocessed noisy images.
It is more difficult to extract features from such unprocessed images which in-turn reduces object recognition or classification rate.
Our project proposes an image pre-processing method, so that the performance of selected Machine Learning algorithms or Deep Learning algorithms increases in terms of increased accuracy or reduced the number of training images.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quality of image always plays a vital role in in-creasing object recognition
or classification rate. A good quality image gives better recognition or
classification rate than any unprocessed noisy images. It is more difficult to
extract features from such unprocessed images which in-turn reduces object
recognition or classification rate. To overcome problems occurred due to low
quality image, typically pre-processing is done before extracting features from
the image. Our project proposes an image pre-processing method, so that the
performance of selected Machine Learning algorithms or Deep Learning algorithms
increases in terms of increased accuracy or reduced the number of training
images. In the later part, we compare the performance results by using our
method with the previous used approaches.
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