Adaboost with "Keypoint Presence Features" for Real-Time Vehicle Visual Detection

10/07/2009
by   Taoufik Bdiri, et al.
0

We present promising results for real-time vehicle visual detection, obtained with adaBoost using new original ?keypoints presence features?. These weak-classifiers produce a boolean response based on presence or absence in the tested image of a ?keypoint? ( a SURF interest point) with a descriptor sufficiently similar (i.e. within a given distance) to a reference descriptor characterizing the feature. A first experiment was conducted on a public image dataset containing lateral-viewed cars, yielding 95 on test set. Moreover, analysis of the positions of adaBoost-selected keypoints show that they correspond to a specific part of the object category (such as ?wheel? or ?side skirt?) and thus have a ?semantic? meaning.

READ FULL TEXT
research
10/07/2009

Visual object categorization with new keypoint-based adaBoost features

We present promising results for visual object categorization, obtained ...
research
10/07/2009

Introducing New AdaBoost Features for Real-Time Vehicle Detection

This paper shows how to improve the real-time object detection in comple...
research
03/18/2017

A Fast HOG Descriptor Using Lookup Table and Integral Image

The histogram of oriented gradients (HOG) is a widely used feature descr...
research
12/10/2019

SKD: Unsupervised Keypoint Detecting for Point Clouds using Embedded Saliency Estimation

In this work we present a novel keypoint detector that uses saliency to ...
research
04/07/2023

ALIKED: A Lighter Keypoint and Descriptor Extraction Network via Deformable Transformation

Image keypoints and descriptors play a crucial role in many visual measu...
research
03/24/2015

Fast keypoint detection in video sequences

A number of computer vision tasks exploit a succinct representation of t...
research
10/18/2022

Compact multi-scale periocular recognition using SAFE features

In this paper, we present a new approach for periocular recognition base...

Please sign up or login with your details

Forgot password? Click here to reset