FOAM: A General Frequency-Optimized Anti-Overlapping Framework for Overlapping Object Perception
Mingyuan Li, Tong Jia, Han Gu, Hui Lu, Hao Wang, Bowen Ma, Shuyang Lin, Shiyi Guo, Shizhuo Deng, and Dongyue Chen

TL;DR
This paper introduces FOAM, a frequency domain framework that enhances overlapping object perception by extracting more texture and contour features, significantly improving accuracy in various detection and segmentation tasks.
Contribution
The paper proposes a novel frequency domain framework with FSTB and HDC mechanisms to improve overlapping object perception, addressing limitations of spatial domain methods.
Findings
Improves accuracy on four datasets across three tasks.
Enhances foreground feature extraction and background suppression.
Demonstrates generalization across different models and tasks.
Abstract
Overlapping object perception aims to decouple the randomly overlapping foreground-background features, extracting foreground features while suppressing background features, which holds significant application value in fields such as security screening and medical auxiliary diagnosis. Despite some research efforts to tackle the challenge of overlapping object perception, most solutions are confined to the spatial domain. Through frequency domain analysis, we observe that the degradation of contours and textures due to the overlapping phenomenon can be intuitively reflected in the magnitude spectrum. Based on this observation, we propose a general Frequency-Optimized Anti-Overlapping Framework (FOAM) to assist the model in extracting more texture and contour information, thereby enhancing the ability for anti-overlapping object perception. Specifically, we design the Frequency Spatial…
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Taxonomy
TopicsAdvanced Neural Network Applications · Neural Networks and Applications · Brain Tumor Detection and Classification
MethodsDropout · Dense Connections · Absolute Position Encodings · Layer Normalization · Spatial Transformer · Byte Pair Encoding · Label Smoothing · Softmax · Transformer · Balanced Selection
