在运动视频中使用增强型移动物体检测算法的高效物体检测和分类方法

K. Madhan, N. Shanmugapriya
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引用次数: 0

摘要

由于在视觉跟踪等领域的应用,物体检测和分类已成为计算机视觉领域的重要研究课题。尽管取得了进步,但要在复杂的动态环境中高精度地检测较小的目标和密集的物体,基于视觉的方法仍然面临挑战。本文基于增强移动物体检测(EMOD)算法和为搜索而优化的基于蝠鲼的改进型卷积神经网络,介绍了一种用于双曲线阴影检测和物体分类的新型增强方法。在预处理阶段,视频数据转换为帧序列,并应用多项式自适应抗锯齿技术来保持帧大小和减少噪声。此外,增强型边界区域保存算法可提高无噪声编辑图像序列的对比度。为了实现对较小物体的高精度检测,还对每个检测到的物体的格里布轮廓进行了跟踪。最后,利用增强型 Manta 搜索优化的卷积神经网络方法进行目标检测和分类。在不同数据集和基准方法上进行的对比实验表明,该方法在检测和分类方面的准确性和能力都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Object Detection and Classification Approach Using an Enhanced Moving Object Detection Algorithm in Motion Videos
Object detection and classification have become prominent research topics in computer vision due to their applications in areas such as visual tracking. Despite advancements, vision-based methods for detecting smaller targets and densely packed objects with high accuracy in complex dynamic environments still encounter challenges. This paper introduces a novel and enhanced approach for hyperbolic shadow detection and object classification based on the Enhanced Moving Object Detection (EMOD) algorithm and an improved manta ray-based convolutional neural network optimized for search. In the preprocessing phase, the video data transforms into a sequence of frames, with polynomial adaptive antialiasing applied to maintain frame size and reduce noise. Additionally, an enhanced boundary area preservation algorithm improves the contrast of noise-free edited image sequences. To achieve high-precision detection of smaller objects, the Grib profile of each detected object is also tracked. Finally, a convolutional neural network method employing an enhanced Manta search optimization is deployed for target detection and classification. Comparative experiments conducted across diverse datasets and benchmark methods demonstrate significantly improved accuracy and expanded capabilities in detection and classification.
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