基于混合神经网络模型的视频显著目标检测

M. Indirani, Cuddapah Anitha, Sohan Goswami, K. Baranitharan, S. Govindaraju, M. R.
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引用次数: 0

摘要

显著性检测是一个活跃的和关键的领域,设计在检测项目的视频记录,尽管如此,它引起了科学家的高度兴趣。随着视频片段信息量的不断增强,显著性项目检测技术的总体性能与典型项目检测技术相比有所下降。问题在于模糊的移动目标,超快速的项目运动以及动态背景或背景遮挡改变视频剪辑帧内的前景区域。这种障碍导致显著性检测效果不佳。本文模拟了一个完整的母带设计来解决这个问题,并将卷积神经网络(CNN)和递归神经网络(RNN)的思想与萤火虫优化技术相结合,建立了一个先进的框架来进行视频片段显著性检测。很好地利用了萤火虫算法和CRNN算法,对视频片段进行特征去除,进行物品识别。本文的主要目标是为卷积递归神经网络(crnn)提供一个有效的超参数选择框架,该框架采用了更流行的群体智能方法之一,萤火虫算法。建议的技术目标是创建一个利用时间、本地和空间限制线索来实现全球SEO的时空设计。在深度基准功能强大的视频记录数据集中,通过记录所有CRNN的时间、局部和空间限制特征来完成突出项的定位过程。在典型视频片段显著项检测技术的基准数据集上对CRNN进行了准确性和计算量方面的检验。测试结果表明,与现有的一些版本相比,所提出的设计实现了整体性能的提高,并且能够显著满足所有传统的目标检测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Salient Objects in a Video using a Hybrid Neural Network Model
Salient detection is an active and critical area that is designed within the detection of items of a video recording, nonetheless, it attracts elevated interest among scientists. With rising powerful video clip information, the overall performance of saliency item detection techniques is degrading with typical item detection techniques. The problems lie with blurry moving goals, super-fast motion of items as well as dynamic background or background occlusion alteration on foreground areas within the video clip frames. This kind of obstacle leads to bad saliency detection. This paper models a full mastering design to deal with the difficulties, and that works on an advanced framework by merging the thought of Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) with firefly Optimization technique for video clip saliency detection. Good utilization of the firefly algorithm together with CRNN is completed for the removal of characteristics by the video clips for item recognition. The primary objective of this newspaper is to present an effective hyperparameter choice framework for Convolution Recurrent Neural Networks (CRNNs) that employ one of the more popular swarm intelligence methods, the firefly algorithm. The suggested technique goals at creating a spatiotemporal design that exploits temporal, local, and spatial restriction cues to attain worldwide SEO. The process of locating the salient items in deep benchmark powerful video recording datasets will be completed by recording the temporal, local, and spatial restriction characteristics with all the CRNN. The CRNN is examined on benchmark datasets from typical video clip salient item detection techniques within the terminology of accuracy and load of Computation. The tests show that the proposed design accomplishes enhanced overall performance compared to some other existing versions which prove to significantly satisfy all the traditional object detection models.
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