Salient Segmentation based Object Detection and Recognition using Hybrid Genetic Transform

Abrar Ahmed, A. Jalal, A. Rafique
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引用次数: 37

Abstract

Object detection and recognition is an effective and fundamental technique used to track the objects accurately in complex scenes. Over the last decade, object analysis has caught the attention of researchers to explore and cover the aspects of object detection and recognition related problems in the technologies such as robotics, surveillance, agriculture, medical and marketing. In this paper, we present a unique method for accurate object recognition. Firstly, the clustering of similar colors and regions is achieved by applying K-mean clustering algorithm. Secondly, segmentation is performed by merging the previously achieved clusters, which are similar and connected. Thirdly, Generalized Hough transform is used for the detection of salient objects. Finally, Genetic algorithm is applied as recognizer engine to recognize the salient objects under different environmental settings. The accuracy of our experimental work has been evaluated on the benchmark dataset MSRC.
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基于显著分割的混合遗传变换目标检测与识别
目标检测与识别是在复杂场景中准确跟踪目标的一项有效而基础的技术。在过去的十年中,目标分析已经引起了研究人员的关注,它探索和涵盖了机器人、监控、农业、医疗和营销等技术中目标检测和识别相关问题的各个方面。在本文中,我们提出了一种独特的精确目标识别方法。首先,采用k均值聚类算法实现相似颜色和相似区域的聚类;其次,通过合并先前实现的相似且相互连接的聚类来进行分割。第三,采用广义霍夫变换对显著目标进行检测。最后,采用遗传算法作为识别引擎,对不同环境下的显著目标进行识别。我们的实验工作的准确性已经在基准数据集MSRC上进行了评估。
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