Receptive Field
A receptive field, in the context of neural networks, defines the region of input data that influences the output of a single neuron or feature map. Current research focuses on expanding receptive fields to improve the ability of models (like U-Nets, Transformers, and Mamba-based architectures) to capture long-range dependencies and contextual information, particularly in image segmentation and time series forecasting. This is achieved through techniques such as dilated convolutions, attention mechanisms, and novel scanning strategies, ultimately aiming for improved accuracy and efficiency in various applications, including medical image analysis and remote sensing. The impact of receptive field size on model performance and generalization is a key area of investigation, with a growing emphasis on balancing computational cost with the benefits of broader contextual understanding.
Papers
Rethinking Scanning Strategies with Vision Mamba in Semantic Segmentation of Remote Sensing Imagery: An Experimental Study
Qinfeng Zhu, Yuan Fang, Yuanzhi Cai, Cheng Chen, Lei Fan
Progressive enhancement and restoration for mural images under low-light and defected conditions based on multi-receptive field strategy
Xiameng Wei, Binbin Fan, Ying Wang, Yanxiang Feng, Laiyi Fu
Swin-UMamba: Mamba-based UNet with ImageNet-based pretraining
Jiarun Liu, Hao Yang, Hong-Yu Zhou, Yan Xi, Lequan Yu, Yizhou Yu, Yong Liang, Guangming Shi, Shaoting Zhang, Hairong Zheng, Shanshan Wang
Densely Decoded Networks with Adaptive Deep Supervision for Medical Image Segmentation
Suraj Mishra, Danny Z. Chen