An activity recognition system is a very important component for assistant robots, but training such a system usually requires a large and correctly labeled dataset. Most of the previous works only allow training data to have a single activity label per segment, which is overly restrictive because the labels are not always certain. It is, therefore, desirable to allow multiple labels for ambiguous segments. In this paper, we introduce the method of soft labeling, which allows annotators to assign multiple, weighted, labels to data segments. This is useful in many situations, e.g. when the labels are uncertain, when part of the labels are missing, or when multiple annotators assign inconsistent labels. We treat the activity recognition task ...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
Annotation of multimodal data sets is often a time consuming and a challenging task as many approach...
Wearable physiological sensors can provide a faithful record of a patient's physiological states wit...
Abstract—An activity recognition system is a very important component for assistant robots, but trai...
Human activity recognition system is of great importance in robot-care scenarios. Typically, trainin...
Nowadays, large real-world data sets are collected in science, engineering, health care and other fi...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
This thesis investigated the problem of understanding human activities, at different levels of granu...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
Recognizing human activities from wearable sensor data is an important problem, particularly for hea...
Abstract. Recognising daily activity patterns of people from low-level sensory data is an important ...
On-body sensing has enabled scalable and unobtrusive activity recognition for context-aware wearable...
Working with multimodal datasets is a challenging task as it requires annotations which often are ti...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
Annotation of multimodal data sets is often a time consuming and a challenging task as many approach...
Wearable physiological sensors can provide a faithful record of a patient's physiological states wit...
Abstract—An activity recognition system is a very important component for assistant robots, but trai...
Human activity recognition system is of great importance in robot-care scenarios. Typically, trainin...
Nowadays, large real-world data sets are collected in science, engineering, health care and other fi...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
This thesis investigated the problem of understanding human activities, at different levels of granu...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
Recognizing human activities from wearable sensor data is an important problem, particularly for hea...
Abstract. Recognising daily activity patterns of people from low-level sensory data is an important ...
On-body sensing has enabled scalable and unobtrusive activity recognition for context-aware wearable...
Working with multimodal datasets is a challenging task as it requires annotations which often are ti...
Since people perform activities differently, to avoid overfitting, creating a general model with act...
Annotation of multimodal data sets is often a time consuming and a challenging task as many approach...
Wearable physiological sensors can provide a faithful record of a patient's physiological states wit...