Advertisement

KCF代码解析.docx

  •  5星
  •     浏览量: 0
  •     大小:None
  •      文件类型:None


简介:
《KCF代码解析》一文深入浅出地讲解了KCF编码规则与应用技巧,适合软件开发人员及编程爱好者学习参考。文档详细介绍了代码结构、常见问题解决方案等内容。 对MATLAB函数进行了解释,并且代码是按照运行顺序排列的。在`tracker.m`文件中调用了多个子函数,这些子函数的解释放在后面。

全部评论 (0)

还没有任何评论哟~
客服
客服
  • KCF.docx
    优质
    《KCF代码解析》一文深入浅出地讲解了KCF编码规则与应用技巧,适合软件开发人员及编程爱好者学习参考。文档详细介绍了代码结构、常见问题解决方案等内容。 对MATLAB函数进行了解释,并且代码是按照运行顺序排列的。在`tracker.m`文件中调用了多个子函数,这些子函数的解释放在后面。
  • KCF
    优质
    《KCF源码代码详解》是一本深入解析基于Kernel Correlation Filters的目标跟踪算法核心代码的书籍,适合计算机视觉领域的研究人员和开发者阅读。书中不仅详细解释了KCF算法的工作原理,还提供了实际应用案例与源码分析,帮助读者更好地理解和实现该算法。 ## Tracking with Kernelized Correlation Filters Code Author: Tomas Vojir This is a C++ reimplementation of the algorithm described in the paper High-Speed Tracking with Kernelized Correlation Filters. For more information and implementations in other languages, visit the authors webpage. The code includes an extension for scale estimation (using seven different scales) and incorporates RGB channels as well as Color Names features. Data for the Color Names feature was obtained from the SAMF tracker repository. It is free to use for research purposes. If you find it useful or use it in your work, please acknowledge my git repository and cite the original paper [1]. The code relies on OpenCV 2.4+ library and can be built using cmake toolchain. ### Quick Start Guide For Linux: open terminal in the directory with the code ``` $ mkdir build; cd build; cmake .. ; make ``` This compiles into binary **kcf_vot** - kcf_vot: - Uses VOT 2014 methodology. - INPUT: Two files are expected, images.txt (list of sequence images with absolute path) and region.txt (initial bounding box in the first frame in format top_left_x, top_left_y, width, height or four corner points listed clockwise starting from bottom left corner). - OUTPUT: output.txt containing the bounding boxes in the format top_left_x, top_left_y, width, height. - kcf_trax: - Uses VOT 2014+ trax protocol. - Requires [trax](https://github.com/votchallenge/trax) library to be compiled with OpenCV support and installed. See trax instructions for compiling and installing. ### Performance | | **VOT2016 - baseline EAO** | **VOT2016 - unsupervised EAO** | [TV77](http://cmp.felk.cvut.cz/~vojirtom/dataset/index.html) Avg. Recall | |:---------------|:--------------:|:------------------:|:----------------:| | kcf | 0.1530 | 0.3859 | 51% | | skcf | 0.1661 | 0.4155 | 56% | | skcf-cn | 0.178 | 0.4136 | 58% | | kcf-master | **0.1994** | **0.4376** | **63%** | ### References [1] João F. Henriques, Rui Caseiro, Pedro Martins, Jorge Batista, High-Speed Tracking with Kernelized Correlation Filters, IEEE Transactions on Pattern Analysis and Machine Intelligence, 2015. [2] J. van de Weijer, C. Schmid, J. J. Verbeek, and D. Larlus. Learning color names for real-world applications. TIP, 18(7):1512–1524, 2009. ### Copyright Copyright (c) 2014 Tomáš Vojíř Permission to use, copy, modify and distribute this software for research purposes is hereby granted provided that the above copyright notice and this permission notice appear in all copies. THE SOFTWARE IS PROVIDED AS IS AND THE AUTHOR DISCLAIMS ALL WARRANTIES WITH REGARD TO THIS SOFTWARE INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS. IN NO EVENT SHALL THE AUTHOR BE LIABLE FOR ANY SPECIAL, DIRECT, INDIRECT OR CONSEQUENTIAL DAMAGES OR ANY DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS ACTION ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE OF THIS SOFTWARE. ### Additional Library NOTE: The following files are part of Piotr’s Toolbox and were modified for use with C++: - srcpiotr_fhoggradientMex.cpp - srcpiotr_fhogsse.hpp - srcpiotr_fhogwrappers.hpp You can get the full version of this library from its official source. ### Copyright (c) 2012, Piotr Dollar. All rights reserved. Redistribution and use in source and binary forms, with or without modification, are permitted provided that the following conditions are met: 1. Redistributions of source code must retain the above copyright notice, this list of conditions and the following disclaimer. 2. Redistributions in binary form must reproduce the above copyright notice, this list of conditions and the following disclaimer in the documentation and other materials provided with the distribution. THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS AS IS AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL EXEMPLARY OR CONSEQUENTIAL DAMAGES (INCLUDING PROCUREMENT OF SUBSTITUTE GOODS
  • Matlab KCF算法简:无需数学基础轻松理KCF
    优质
    本文章深入浅出地解析了MATLAB下的KCF算法,旨在帮助读者即使不具备深厚数学背景也能快速理解和掌握该算法的核心代码逻辑。 在计算机视觉领域,KCF(Kernelized Correlation Filters)备受关注与好评。然而,获取其代码并理解它往往较为困难。本资源基于Matlab中的KCF代码进行讲解,并上传了相应的Matlab代码。同时,简要介绍了代码的流程及各种变量的定义,在尽量避免使用数学公式的情况下帮助读者理解KCF的工作原理。
  • KCF MATLAB
    优质
    KCF MATLAB代码提供了一种高效的目标跟踪解决方案,基于Kernelized Correlation Filters (KCF)算法,适用于计算机视觉领域的研究人员和工程师。此代码实现了快速准确的物体追踪功能,在多种视频序列上表现出色。 使用MATLAB对KCF目标跟踪算法进行仿真实现,结果显示其追踪效果非常快。
  • KCF算法的
    优质
    本代码实现了一种名为KCF(Kernel Correlation Filters)的目标跟踪算法,适用于计算机视觉中的视频目标追踪任务。 KCF算法是一种优良的跟踪算法,这里寻找其源码。
  • KCF-Matlab-JF大神经典算法KCF的个人理和注释
    优质
    本资源提供了对JF大神经典目标跟踪算法KCF的Matlab实现进行详细解读和个人理解,包含丰富的注释帮助学习者深入掌握KCF算法原理及其应用。 本代码是对JF大神的经典KCF算法的核心部分——MATLAB版本的tracker函数进行个人理解和注释的结果。主要解析了开源的MATLAB代码中的tracker函数内容。
  • 改进版的KCF
    优质
    本简介介绍一种基于原有KCF(Kernelized Correlation Filters)算法的改进版本。通过优化跟踪性能和提高计算效率,使得目标跟踪更为准确与快速。该版本对原KCF框架进行了若干关键性调整,旨在应对更复杂的视觉跟踪挑战,并保持了模型的小巧轻便特点。 KCF单目标跟踪经过改进后性能得到了提升。
  • KCF执行流程图
    优质
    《KCF代码执行流程图》是一份详细展示KCF(Kernel Correlation Filters)算法内部工作原理的图表资料,通过直观的图形化方式呈现了从初始化到最终目标跟踪的每一阶段关键步骤和数据流转过程。此资源对于理解复杂算法背后的逻辑、调试以及优化具有重要参考价值。 想进一步了解《KCF代码运行流程图》?请参阅相关文章详情。
  • QQDIY名片json.docx
    优质
    本文档详细解析了QQ DIY名片中使用的JSON代码结构与应用方法,旨在帮助用户深入理解并灵活运用JSON数据格式来定制个性化名片。 DIY名片必备教程,结合太极和DIY软件使用。