ReflexSplit:通过层融合-分离实现单图像反射分离 / ReflexSplit: Single Image Reflection Separation via Layer Fusion-Separation
1️⃣ 一句话总结
这篇论文提出了一个名为ReflexSplit的双流神经网络框架,通过创新的跨尺度融合和交替的融合-分离模块,有效解决了单张图像中因玻璃反光导致的图像混合分离难题,在复杂场景下实现了更清晰、更准确的反射层和背景层分离效果。
Single Image Reflection Separation (SIRS) disentangles mixed images into transmission and reflection layers. Existing methods suffer from transmission-reflection confusion under nonlinear mixing, particularly in deep decoder layers, due to implicit fusion mechanisms and inadequate multi-scale coordination. We propose ReflexSplit, a dual-stream framework with three key innovations. (1) Cross-scale Gated Fusion (CrGF) adaptively aggregates semantic priors, texture details, and decoder context across hierarchical depths, stabilizing gradient flow and maintaining feature consistency. (2) Layer Fusion-Separation Blocks (LFSB) alternate between fusion for shared structure extraction and differential separation for layer-specific disentanglement. Inspired by Differential Transformer, we extend attention cancellation to dual-stream separation via cross-stream subtraction. (3) Curriculum training progressively strengthens differential separation through depth-dependent initialization and epoch-wise warmup. Extensive experiments on synthetic and real-world benchmarks demonstrate state-of-the-art performance with superior perceptual quality and robust generalization. Our code is available at this https URL.
ReflexSplit:通过层融合-分离实现单图像反射分离 / ReflexSplit: Single Image Reflection Separation via Layer Fusion-Separation
这篇论文提出了一个名为ReflexSplit的双流神经网络框架,通过创新的跨尺度融合和交替的融合-分离模块,有效解决了单张图像中因玻璃反光导致的图像混合分离难题,在复杂场景下实现了更清晰、更准确的反射层和背景层分离效果。
源自 arXiv: 2601.17468