首页|Research from Kongu Engineering College in the Area of Pattern Recognition and Artificial Intelligence Published (Deep Residual Network with Pelican Cuckoo Search for Traffic Sign Detection)

Research from Kongu Engineering College in the Area of Pattern Recognition and Artificial Intelligence Published (Deep Residual Network with Pelican Cuckoo Search for Traffic Sign Detection)

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New study results on pattern recognition and artificial intelligence have been published. According to news reporting originating from Tamil Nadu, India, by NewsRx correspondents, research stated, “The timely and precise discovery of traffic signs is considered an effective part of modeling automated vehicle driving.” The news reporters obtained a quote from the research from Kongu Engineering College: “However, the dimension of traffic signs accounted for a lower ratio of input pictures which elevated the complexity of discovery. Hence, a new model is devised using faster region-based convolution neural network (faster R-CNN) traffic for detecting traffic signs. The Region of Interest (RoI) extraction and Median filter are executed for discarding the superfluous data from the dataset. The method extracted a Pyramid Histogram of Oriented Gradient (PHoG), local vector pattern (LVP), CNN and ResNet features for generating beneficial information. It is used to lessen the loss of contextual data and the data augmentation is further applied for making the training of the model more stable and time-saving. The traffic sign recognition is executed with faster R-CNN wherein the tuning of hyperparameters such as batch normalization rate, epoch and learning rate is determined by the proposed pelican cuckoo search (PCS).” According to the news editors, the research concluded: “The method revealed improved efficacy without presenting additional computational costs in the model. Moreover, the faster R-CNN is termed the finest technique to enhance the discovery of traffic signs. The proposed PCS-based faster R-CNN outperformed with the highest precision 92.7%, specificity of 93.7% and [Formula: see text]-measure of 93.2%.”

Kongu Engineering CollegeTamil NaduIndiaAsiaMachine LearningPattern Recognition and Artificial Intelligence

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.9)
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