Object Detection and Semantic Segmentation using Neural Networks
R.Karthika, S. N Santhalakshmi "Object Detection and Semantic Segmentation using Neural Networks". International Journal of Computer Trends and Technology (IJCTT) V47(2):95-100, May 2017. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
Semantic segmentation and
object detection are two most common tasks in the
field of digital image processing, classification and
segmentation. The object detection in repetition
domain will be approached to segment objects from
foreground with absence of background noise. This
work has introduced one automatically detecting an
object to increase the accuracy and yield and
decrease the diagnosis time. This proposed method
represents image Segmentation and Object
Detection using NN classifier. The first step for input
image segmentation and feature extracted from
segmented image using NN classifier. The goal of
Classification is to find Object from input ones.
At the end it is shown the object detected
image. The best results can be achieved by this
proposed image segmentation and classification
image.
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Keywords
Thresholding, GLSM , Probabilistic
Neural Networks, Threshold, eigen, Palmprint,
vector clustering, kernel tric, semantic segmentation,
Down sampling, neural networks, Perceptron,
Discrete wavelet, Modeling, simulation, and
prototyping, vectors.