Speed Up Tracking by Ignoring Features CVPR 2014 Abstract:本文提出一种特征选择的算法,来实现用最"精简"的特征以进行目标跟踪.重点是提出一种上界 (Upper Bound)来表示一块区域包含目标物体的概率,并且忽略掉这个 bound比较小的区域.我们的实验表明,忽略掉 90%的特征,仍然取得了不错的结果(未损失精度). Ignoring Features in Tracking . 基于滑动窗口的跟踪器,计算大量的 bound
http://rogerioferis.com/VisualRecognitionAndSearch2014/Resources.html Source Code Non-exhaustive list of state-of-the-art implementations related to visual recognition and search. There is no warranty for the source code links below – use them at you
42028: Assignment 1 – Autumn 2019 Page 1 of 4Faculty of Engineering and Information TechnologySchool of Software42028: Deep Learning and Convolutional Neural NetworksAutumn 2019ASSIGNMENT-1 SPECIFICATIONDue date Friday 11:59pm, 19 April 2019 (Extende
ResNet, AlexNet, VGG, Inception: Understanding various architectures of Convolutional Networks by KOUSTUBH this blog from: http://cv-tricks.com/cnn/understand-resnet-alexnet-vgg-inception/ Convolutional neural networks are fantastic for visual