Hierarchical Adaptive Structural SVM for Domain Adaptation

08/22/2014
by   Jiaolong Xu, et al.
0

A key topic in classification is the accuracy loss produced when the data distribution in the training (source) domain differs from that in the testing (target) domain. This is being recognized as a very relevant problem for many computer vision tasks such as image classification, object detection, and object category recognition. In this paper, we present a novel domain adaptation method that leverages multiple target domains (or sub-domains) in a hierarchical adaptation tree. The core idea is to exploit the commonalities and differences of the jointly considered target domains. Given the relevance of structural SVM (SSVM) classifiers, we apply our idea to the adaptive SSVM (A-SSVM), which only requires the target domain samples together with the existing source-domain classifier for performing the desired adaptation. Altogether, we term our proposal as hierarchical A-SSVM (HA-SSVM). As proof of concept we use HA-SSVM for pedestrian detection and object category recognition. In the former we apply HA-SSVM to the deformable part-based model (DPM) while in the latter HA-SSVM is applied to multi-category classifiers. In both cases, we show how HA-SSVM is effective in increasing the detection/recognition accuracy with respect to adaptation strategies that ignore the structure of the target data. Since, the sub-domains of the target data are not always known a priori, we shown how HA-SSVM can incorporate sub-domain structure discovery for object category recognition.

READ FULL TEXT

page 2

page 6

page 9

page 12

page 13

research
10/18/2022

Domain Adaptation in 3D Object Detection with Gradual Batch Alternation Training

We consider the problem of domain adaptation in LiDAR-based 3D object de...
research
05/19/2018

Learning Sampling Policies for Domain Adaptation

We address the problem of semi-supervised domain adaptation of classific...
research
11/09/2016

Node-Adapt, Path-Adapt and Tree-Adapt:Model-Transfer Domain Adaptation for Random Forest

Random Forest (RF) is a successful paradigm for learning classifiers due...
research
01/30/2023

DAFD: Domain Adaptation via Feature Disentanglement for Image Classification

A good feature representation is the key to image classification. In pra...
research
03/21/2016

Beyond Sharing Weights for Deep Domain Adaptation

The performance of a classifier trained on data coming from a specific d...
research
06/25/2017

Target contrastive pessimistic risk for robust domain adaptation

In domain adaptation, classifiers with information from a source domain ...
research
06/21/2018

Target Contrastive Pessimistic Discriminant Analysis

Domain-adaptive classifiers learn from a source domain and aim to genera...

Please sign up or login with your details

Forgot password? Click here to reset