研究目的
To improve the efficiency and speed of BILS by using micro-differential evolution (DE) to replace deterministic search (DS) in BILS for TAN optimization.
研究成果
The micro-DE-based deBILS approach offers improved performance in both recognition speed and vision quality in most single and multiple target cases. It achieves a good balance on speed and quality compared with GA and SS, and can be useful for other complex structural optimization problems in machine intelligence.
研究不足
The study focuses on binary images and does not extensively analyze the energy function parameters pertinent to the TAN problem. The link-cut procedure, which relates to the problem model but not the algorithm design, is not studied in detail.