South America
Multi-level Contrast Network for Wearables-based Joint Activity Segmentation and Recognition
Xia, Songpengcheng, Chu, Lei, Pei, Ling, Yu, Wenxian, Qiu, Robert C.
Human activity recognition (HAR) with wearables is promising research that can be widely adopted in many smart healthcare applications. In recent years, the deep learning-based HAR models have achieved impressive recognition performance. However, most HAR algorithms are susceptible to the multi-class windows problem that is essential yet rarely exploited. In this paper, we propose to relieve this challenging problem by introducing the segmentation technology into HAR, yielding joint activity segmentation and recognition. Especially, we introduce the Multi-Stage Temporal Convolutional Network (MS-TCN) architecture for sample-level activity prediction to joint segment and recognize the activity sequence. Furthermore, to enhance the robustness of HAR against the inter-class similarity and intra-class heterogeneity, a multi-level contrastive loss, containing the sample-level and segment-level contrast, has been proposed to learn a well-structured embedding space for better activity segmentation and recognition performance. Finally, with comprehensive experiments, we verify the effectiveness of the proposed method on two public HAR datasets, achieving significant improvements in the various evaluation metrics.
SOLBP: Second-Order Loopy Belief Propagation for Inference in Uncertain Bayesian Networks
Hougen, Conrad D., Kaplan, Lance M., Ivanovska, Magdalena, Cerutti, Federico, Mishra, Kumar Vijay, Hero, Alfred O. III
In second-order uncertain Bayesian networks, the conditional probabilities are only known within distributions, i.e., probabilities over probabilities. The delta-method has been applied to extend exact first-order inference methods to propagate both means and variances through sum-product networks derived from Bayesian networks, thereby characterizing epistemic uncertainty, or the uncertainty in the model itself. Alternatively, second-order belief propagation has been demonstrated for polytrees but not for general directed acyclic graph structures. In this work, we extend Loopy Belief Propagation to the setting of second-order Bayesian networks, giving rise to Second-Order Loopy Belief Propagation (SOLBP). For second-order Bayesian networks, SOLBP generates inferences consistent with those generated by sum-product networks, while being more computationally efficient and scalable.
BERT(s) to Detect Multiword Expressions
Premasiri, Damith, Ranasinghe, Tharindu
Multiword expressions (MWEs) present groups of words in which the meaning of the whole is not derived from the meaning of its parts. The task of processing MWEs is crucial in many natural language processing (NLP) applications, including machine translation and terminology extraction. Therefore, detecting MWEs is a popular research theme. In this paper, we explore state-of-the-art neural transformers in the task of detecting MWEs. We empirically evaluate several transformer models in the dataset for SemEval-2016 Task 10: Detecting Minimal Semantic Units and their Meanings (DiMSUM). We show that transformer models outperform the previous neural models based on long short-term memory (LSTM). The code and pre-trained model will be made freely available to the community.
A Review of the Convergence of 5G/6G Architecture and Deep Learning
Odeyomi, Olusola T., Akintade, Olubiyi O., Olowu, Temitayo O., Zaruba, Gergely
The convergence of 5G architecture and deep learning has gained a lot of research interests in both the fields of wireless communication and artificial intelligence. This is because deep learning technologies have been identified to be the potential driver of the 5G technologies, that make up the 5G architecture. Hence, there have been extensive surveys on the convergence of 5G architecture and deep learning. However, most of the existing survey papers mainly focused on how deep learning can converge with a specific 5G technology, thus, not covering the full spectrum of the 5G architecture. Although there is a recent survey paper that appears to be robust, a review of that paper shows that it is not well structured to specifically cover the convergence of deep learning and the 5G technologies. Hence, this paper provides a robust overview of the convergence of the key 5G technologies and deep learning. The challenges faced by such convergence are discussed. In addition, a brief overview of the future 6G architecture, and how it can converge with deep learning is also discussed.
STTAR: Surgical Tool Tracking using off-the-shelf Augmented Reality Head-Mounted Displays
Martin-Gomez, Alejandro, Li, Haowei, Song, Tianyu, Yang, Sheng, Wang, Guangzhi, Ding, Hui, Navab, Nassir, Zhao, Zhe, Armand, Mehran
The use of Augmented Reality (AR) for navigation purposes has shown beneficial in assisting physicians during the performance of surgical procedures. These applications commonly require knowing the pose of surgical tools and patients to provide visual information that surgeons can use during the task performance. Existing medical-grade tracking systems use infrared cameras placed inside the Operating Room (OR) to identify retro-reflective markers attached to objects of interest and compute their pose. Some commercially available AR Head-Mounted Displays (HMDs) use similar cameras for self-localization, hand tracking, and estimating the objects' depth. This work presents a framework that uses the built-in cameras of AR HMDs to enable accurate tracking of retro-reflective markers, such as those used in surgical procedures, without the need to integrate any additional components. This framework is also capable of simultaneously tracking multiple tools. Our results show that the tracking and detection of the markers can be achieved with an accuracy of 0.09 +- 0.06 mm on lateral translation, 0.42 +- 0.32 mm on longitudinal translation, and 0.80 +- 0.39 deg for rotations around the vertical axis. Furthermore, to showcase the relevance of the proposed framework, we evaluate the system's performance in the context of surgical procedures. This use case was designed to replicate the scenarios of k-wire insertions in orthopedic procedures. For evaluation, two surgeons and one biomedical researcher were provided with visual navigation, each performing 21 injections. Results from this use case provide comparable accuracy to those reported in the literature for AR-based navigation procedures.
Machine Learning-Based Test Smell Detection
Pontillo, Valeria, d'Aragona, Dario Amoroso, Pecorelli, Fabiano, Di Nucci, Dario, Ferrucci, Filomena, Palomba, Fabio
Context: Test smells are symptoms of sub-optimal design choices adopted when developing test cases. Previous studies have proved their harmfulness for test code maintainability and effectiveness. Therefore, researchers have been proposing automated, heuristic-based techniques to detect them. However, the performance of such detectors is still limited and dependent on thresholds to be tuned. Objective: We propose the design and experimentation of a novel test smell detection approach based on machine learning to detect four test smells. Method: We plan to develop the largest dataset of manually-validated test smells. This dataset will be leveraged to train six machine learners and assess their capabilities in within- and cross-project scenarios. Finally, we plan to compare our approach with state-of-the-art heuristic-based techniques.
Putin calls Russian arms 'significantly superior' to rivals
Russia is ready to sell advanced weapons to allies globally and cooperate in developing military technology, President Vladimir Putin said, adding its latest arms are far superior to those of rival nations. With the Russian leader's forces beaten back from Ukraine's two biggest cities and making slow headway at a heavy cost in the east, the five-month war in Ukraine has so far not proved to be a convincing showcase for Russia's weapons industry. However, the Kremlin leader, addressing an arms show outside Moscow, insisted Russian armaments were years ahead of the competition. Russia cherishes its strong ties with Latin America, Asia and Africa, "and is ready to offer partners and allies the most modern types of weapons – from small arms to armoured vehicles and artillery, combat aircraft and unmanned aerial vehicles", said Putin. "Almost all of them have been used more than once in real combat operations," he added.
Inventor develops a bizarre four-legged robot that allows snakes to 'walk'
An eccentric inventor has created a bizarre four-legged robot that allows snakes to'walk'. Allen Pan, a Los Angeles-based engineer and YouTuber, created the device out of a long tube and four plastic legs connected to a controller board. Footage shows a snake curiously poking its head out the end of the device as it's serenely transported around the room. Pan, who posted a video blog of his project to YouTube, said he wanted to'give snakes back their legs'. Around 150 million years ago, snakes had visible legs, but they evolved to lose them, thought to be due to a genetic mutation.
DDOS: A MOS Prediction Framework utilizing Domain Adaptive Pre-training and Distribution of Opinion Scores
Tseng, Wei-Cheng, Kao, Wei-Tsung, Lee, Hung-yi
Mean opinion score (MOS) is a typical subjective evaluation metric for speech synthesis systems. Since collecting MOS is time-consuming, it would be desirable if there are accurate MOS prediction models for automatic evaluation. In this work, we propose DDOS, a novel MOS prediction model. DDOS utilizes domain adaptive pre-training to further pre-train self-supervised learning models on synthetic speech. And a proposed module is added to model the opinion score distribution of each utterance. With the proposed components, DDOS outperforms previous works on BVCC dataset. And the zero shot transfer result on BC2019 dataset is significantly improved. DDOS also wins second place in Interspeech 2022 VoiceMOS challenge in terms of system-level score.
Combining Predictions under Uncertainty: The Case of Random Decision Trees
Busch, Florian, Kulessa, Moritz, Mencía, Eneldo Loza, Blockeel, Hendrik
A common approach to aggregate classification estimates in an ensemble of decision trees is to either use voting or to average the probabilities for each class. The latter takes uncertainty into account, but not the reliability of the uncertainty estimates (so to say, the "uncertainty about the uncertainty"). More generally, much remains unknown about how to best combine probabilistic estimates from multiple sources. In this paper, we investigate a number of alternative prediction methods. Our methods are inspired by the theories of probability, belief functions and reliable classification, as well as a principle that we call evidence accumulation. Our experiments on a variety of data sets are based on random decision trees which guarantees a high diversity in the predictions to be combined. Somewhat unexpectedly, we found that taking the average over the probabilities is actually hard to beat. However, evidence accumulation showed consistently better results on all but very small leafs.