@article{uneatlantico17140, year = {2025}, month = {Marzo}, title = {Efficient CNN architecture with image sensing and algorithmic channeling for dataset harmonization}, number = {1}, journal = {Scientific Reports}, author = {Khadija Kanwal and Khawaja Tehseen Ahmad and Aiza Shabir and Li Jing and Helena Garay and Luis Eduardo Prado Gonz{\'a}lez and Hanen Karamti and Imran Ashraf}, volume = {15}, keywords = {Features fusion; Composite structure; Architectural bonding; Algorithmic channelizing; Deep learning}, abstract = {The process of image formulation uses semantic analysis to extract influential vectors from image components. The proposed approach integrates DenseNet with ResNet-50, VGG-19, and GoogLeNet using an innovative bonding process that establishes algorithmic channeling between these models. The goal targets compact efficient image feature vectors that process data in parallel regardless of input color or grayscale consistency and work across different datasets and semantic categories. Image patching techniques with corner straddling and isolated responses help detect peaks and junctions while addressing anisotropic noise through curvature-based computations and auto-correlation calculations. An integrated channeled algorithm processes the refined features by uniting local-global features with primitive-parameterized features and regioned feature vectors. Using K-nearest neighbor indexing methods analyze and retrieve images from the harmonized signature collection effectively. Extensive experimentation is performed on the state-of-the-art datasets including Caltech-101, Cifar-10, Caltech-256, Cifar-100, Corel-10000, 17-Flowers, COIL-100, FTVL Tropical Fruits, Corel-1000, and Zubud. This contribution finally endorses its standing at the peak of deep and complex image sensing analysis. A state-of-the-art deep image sensing analysis method delivers optimal channeling accuracy together with robust dataset harmonization performance.}, url = {http://repositorio.uneatlantico.es/id/eprint/17140/} }