170 research outputs found
Teaching Practice and Research on BIM-Based Assembled Building Measurement and Valuation
As the construction industry and information technology are being deeply integrated, it is of great practical significance to rapidly develop the practical training course Measurement and Valuation of Prefabricated Construction based on building information modeling (BIM). In this paper, we comprehensively analyze the status quo of teaching of the course Measurement and Valuation of Prefabricated Construction in China as well as the existing problems about the BIM-integrated teaching. Further, we take into account four aspects as per the talent training program: course system setup, syllabus development, teacher team building, and construction of a BIM-based construction cost practice base. Then, we put forward a teaching reform mode of the course Measurement and Valuation of Prefabricated Construction, namely a new "five-in-one" teaching mode, which matches new technology and adapts to the transformation and upgrading of China's construction industry. We perform a teaching reform in the BIM-based practical training course Measurement and Valuation of Prefabricated Construction for construction cost majors in School of Construction and Engineering at a Guangxi university. This reform is fruitful and provides a theoretical reference for carrying out the similar reform across China. Keywords: prefabricated construction; measurement and valuation course; BIM; teaching practice and research DOI: 10.7176/JEP/10-27-01 Publication date:September 30th 201
Multi-Faceted Distillation of Base-Novel Commonality for Few-shot Object Detection
Most of existing methods for few-shot object detection follow the fine-tuning
paradigm, which potentially assumes that the class-agnostic generalizable
knowledge can be learned and transferred implicitly from base classes with
abundant samples to novel classes with limited samples via such a two-stage
training strategy. However, it is not necessarily true since the object
detector can hardly distinguish between class-agnostic knowledge and
class-specific knowledge automatically without explicit modeling. In this work
we propose to learn three types of class-agnostic commonalities between base
and novel classes explicitly: recognition-related semantic commonalities,
localization-related semantic commonalities and distribution commonalities. We
design a unified distillation framework based on a memory bank, which is able
to perform distillation of all three types of commonalities jointly and
efficiently. Extensive experiments demonstrate that our method can be readily
integrated into most of existing fine-tuning based methods and consistently
improve the performance by a large margin
Exploring Self- and Cross-Triplet Correlations for Human-Object Interaction Detection
Human-Object Interaction (HOI) detection plays a vital role in scene
understanding, which aims to predict the HOI triplet in the form of <human,
object, action>. Existing methods mainly extract multi-modal features (e.g.,
appearance, object semantics, human pose) and then fuse them together to
directly predict HOI triplets. However, most of these methods focus on seeking
for self-triplet aggregation, but ignore the potential cross-triplet
dependencies, resulting in ambiguity of action prediction. In this work, we
propose to explore Self- and Cross-Triplet Correlations (SCTC) for HOI
detection. Specifically, we regard each triplet proposal as a graph where
Human, Object represent nodes and Action indicates edge, to aggregate
self-triplet correlation. Also, we try to explore cross-triplet dependencies by
jointly considering instance-level, semantic-level, and layout-level relations.
Besides, we leverage the CLIP model to assist our SCTC obtain interaction-aware
feature by knowledge distillation, which provides useful action clues for HOI
detection. Extensive experiments on HICO-DET and V-COCO datasets verify the
effectiveness of our proposed SCTC
Motif-aware temporal GCN for fraud detection in signed cryptocurrency trust networks
Graph convolutional networks (GCNs) is a class of artificial neural networks
for processing data that can be represented as graphs. Since financial
transactions can naturally be constructed as graphs, GCNs are widely applied in
the financial industry, especially for financial fraud detection. In this
paper, we focus on fraud detection on cryptocurrency truct networks. In the
literature, most works focus on static networks. Whereas in this study, we
consider the evolving nature of cryptocurrency networks, and use local
structural as well as the balance theory to guide the training process. More
specifically, we compute motif matrices to capture the local topological
information, then use them in the GCN aggregation process. The generated
embedding at each snapshot is a weighted average of embeddings within a time
window, where the weights are learnable parameters. Since the trust networks is
signed on each edge, balance theory is used to guide the training process.
Experimental results on bitcoin-alpha and bitcoin-otc datasets show that the
proposed model outperforms those in the literature
Cast Shadow Detection for Surveillance System Based on Tricolor Attenuation Model
Abstract. Shadows bring some undesirable problems in computer vision, such as object detecting in outdoor scenes. In this paper, we propose a novel method for cast shadow detecting for moving target in surveillance system. This measure is based on tricolor attenuation model, which describes the relationship of three color channel's attenuation in image when shadow happens. According to this relationship, the cast shadow is removed from the detected moving area, only the target area is left. Some experiments were done, and their results validate the performance of our method
RGBD Salient Object Detection via Deep Fusion
Numerous efforts have been made to design different low level saliency cues
for the RGBD saliency detection, such as color or depth contrast features,
background and color compactness priors. However, how these saliency cues
interact with each other and how to incorporate these low level saliency cues
effectively to generate a master saliency map remain a challenging problem. In
this paper, we design a new convolutional neural network (CNN) to fuse
different low level saliency cues into hierarchical features for automatically
detecting salient objects in RGBD images. In contrast to the existing works
that directly feed raw image pixels to the CNN, the proposed method takes
advantage of the knowledge in traditional saliency detection by adopting
various meaningful and well-designed saliency feature vectors as input. This
can guide the training of CNN towards detecting salient object more effectively
due to the reduced learning ambiguity. We then integrate a Laplacian
propagation framework with the learned CNN to extract a spatially consistent
saliency map by exploiting the intrinsic structure of the input image.
Extensive quantitative and qualitative experimental evaluations on three
datasets demonstrate that the proposed method consistently outperforms
state-of-the-art methods.Comment: This paper has been submitted to IEEE Transactions on Image
Processin
Bumblebees with big teeth: revising the subgenus Alpigenobombus with the good, the bad and the ugly of numts (Hymenoptera: Apidae)
Williams, Paul H., Dorji, Phurpa, Huang, Jiaxing, Jaffar, Saleem, Japoshvili, George, Narah, Jaya, Ren, Zongxin, Streinzer, Martin, Thanoosing, Chawatat, Tian, Li, Orr, Michael C. (2023): Bumblebees with big teeth: revising the subgenus Alpigenobombus with the good, the bad and the ugly of numts (Hymenoptera: Apidae). European Journal of Taxonomy 892 (1): 1-65, DOI: https://doi.org/10.5852/ejt.2023.892.2283, URL: https://europeanjournaloftaxonomy.eu/index.php/ejt/article/download/2283/985
- …