Recognition Rate
Recognition rate, the accuracy of correctly identifying objects or patterns, is a central theme across diverse fields, from biometric security to image analysis. Current research focuses on improving recognition rates through advanced deep learning architectures like Convolutional Neural Networks (CNNs), Vision Transformers (ViTs), and recurrent models, often incorporating techniques like transfer learning, multi-modal fusion, and generative models to enhance performance, particularly in challenging scenarios such as low-resolution images or noisy data. These advancements have significant implications for various applications, including automated surveillance, medical diagnosis, and human-computer interaction, by enabling more reliable and efficient systems.
Papers - Page 3
Neural Edge Histogram Descriptors for Underwater Acoustic Target Recognition
Atharva Agashe, Davelle Carreiro, Alexandra Van Dine, Joshua PeeplesTexas A&M University●Massachusetts Institute of Technology Lincoln LaboratoryTowards Scalable Modeling of Compressed Videos for Efficient Action Recognition
Shristi Das Biswas, Efstathia Soufleri, Arani Roy, Kaushik RoyPurdue University
HAR-DoReMi: Optimizing Data Mixture for Self-Supervised Human Activity Recognition Across Heterogeneous IMU Datasets
Lulu Ban, Tao Zhu, Xiangqing Lu, Qi Qiu, Wenyong Han, Shuangjian Li, Liming Chen, Kevin I-Kai Wang, Mingxing Nie, Yaping WanUniversity of South China●Dalian University of Technology●University of AucklandResLPR: A LiDAR Data Restoration Network and Benchmark for Robust Place Recognition Against Weather Corruptions
Wenqing Kuang (1), Xiongwei Zhao (2), Yehui Shen (1), Congcong Wen (3), Huimin Lu (1), Zongtan Zhou (1)+3National University of Defense Technology●Harbin Institute of Technology●New York University Abu Dhabi●University of Science and Technology...+1
Handling Weak Complementary Relationships for Audio-Visual Emotion Recognition
R. Gnana Praveen, Jahangir AlamComputer Research Institute of Montreal (CRIM)Fraesormer: Learning Adaptive Sparse Transformer for Efficient Food Recognition
Shun Zou, Yi Zou, Mingya Zhang, Shipeng Luo, Zhihao Chen, Guangwei GaoNanjing Agricultural University●Xiangtan University●Nanjing University●Northeast Forestry University●Beijing Information Science and...+2
Joint Image-Instance Spatial-Temporal Attention for Few-shot Action Recognition
Zefeng Qian, Chongyang Zhang, Yifei Huang, Gang Wang, Jiangyong YingHOTFormerLoc: Hierarchical Octree Transformer for Versatile Lidar Place Recognition Across Ground and Aerial Views
Ethan Griffiths, Maryam Haghighat, Simon Denman, Clinton Fookes, Milad RamezaniQueensland University of Technology (QUT)●Data61
PVTree: Realistic and Controllable Palm Vein Generation for Recognition Tasks
Sheng Shang, Chenglong Zhao, Ruixin Zhang, Jianlong Jin, Jingyun Zhang, Rizen Guo, Shouhong Ding, Yunsheng Wu, Yang Zhao, Wei JiaHefei University of Technology●Tencent Youtu Lab●Tencent WeChat Pay LabTeTRA-VPR: A Ternary Transformer Approach for Compact Visual Place Recognition
Oliver Grainge, Michael Milford, Indu Bodala, Sarvapali D. Ramchurn, Shoaib EhsanUniversity of Southampton●Queensland University of Technology●University of Essex