{"slug": "quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field", "title": "Quantum Enchanced Multi-Scale CNN with Bi-directional Mamba for Crop Field Analysis", "summary": "Researchers proposed a BiSpectral Mamba framework combining multi-scale CNN, spectral attention, bidirectional state-space modeling, and quantum-inspired learning for hyperspectral crop field analysis, achieving 84.83% accuracy on the UAVHSI-Crop dataset. The method addresses challenges like high dimensionality and class imbalance, with potential applications in disease detection and yield prediction.", "body_md": "arXiv:2606.17222v1 Announce Type: new\nAbstract: Hyperspectral image (HSI) crop analysis is essential for precision agriculture because it captures rich spectral and spatial information for accurate crop monitoring and assessment. However, HSI classification remains challenging due to high spectral dimensionality, spatial complexity, class imbalance, and limited labeled samples. To address these challenges, this paper proposes a BiSpectral Mamba-based framework that combines multi-scale convolutional feature extraction, spectral attention, bidirectional state-space modeling, and quantum-inspired learning. A multi-scale CNN backbone first extracts hierarchical spatial-spectral representations through feature fusion across multiple resolutions. A spectral attention mechanism then emphasizes informative bands while suppressing redundant and noisy channels. The refined features are processed by a BiSpectral Mamba module that captures long-range dependencies in both forward and backward directions by modeling hyperspectral feature maps as sequential tokens. In addition, class-weighted optimization and feature fusion strategies are incorporated to improve training stability and mitigate class imbalance. Experimental evaluation on the UAVHSI-Crop dataset demonstrates the effectiveness of the proposed framework, achieving an overall accuracy of 84.83%. The results show that integrating convolutional, attention-based, and state-space modeling components enables robust spatial-spectral feature learning for crop classification. The proposed framework also shows potential for broader agricultural and remote sensing applications, including crop disease detection, yield prediction, and soil moisture estimation, while highlighting the effectiveness of structured state-space and quantum-inspired architectures for hyperspectral image analysis.", "url": "https://wpnews.pro/news/quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field", "canonical_source": "https://arxiv.org/abs/2606.17222", "published_at": "2026-06-17 04:00:00+00:00", "updated_at": "2026-06-17 04:24:55.717610+00:00", "lang": "en", "topics": ["machine-learning", "computer-vision", "artificial-intelligence"], "entities": [], "alternates": {"html": "https://wpnews.pro/news/quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field", "markdown": "https://wpnews.pro/news/quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field.md", "text": "https://wpnews.pro/news/quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field.txt", "jsonld": "https://wpnews.pro/news/quantum-enchanced-multi-scale-cnn-with-bi-directional-mamba-for-crop-field.jsonld"}}