I've hacked stats:::plot.TukeyHSD
to do this.
fm1 <- aov(breaks ~ wool + tension, data = warpbreaks)
tt <- TukeyHSD(fm1, "tension", ordered = TRUE)
png("tukey_red.png")
my_plot(tt)
dev.off()

There is one extra argument, and three modified lines of code (indicated by comments).
## add sig.col as an argument
my_plot <- function (x, sig.col = "red", ...) {
for (i in seq_along(x)) {
xi <- x[[i]][, -4L, drop = FALSE]
## assign colors for significant entries
seg.col <- ifelse(sign(xi[, "lwr"]*xi[, "upr"]) > 0,
sig.col, par("fg"))
yvals <- nrow(xi):1L
dev.hold()
on.exit(dev.flush())
plot(c(xi[, "lwr"], xi[, "upr"]), rep.int(yvals, 2L),
type = "n", axes = FALSE, xlab = "", ylab = "", main = NULL,
...)
axis(1, ...)
axis(2, at = nrow(xi):1, labels = dimnames(xi)[[1L]],
srt = 0, ...)
abline(h = yvals, lty = 1, lwd = 0.5, col = "lightgray")
abline(v = 0, lty = 2, lwd = 0.5, ...)
## add seg.col to the next two statements
segments(xi[, "lwr"], yvals, xi[, "upr"], yvals,
col = seg.col, ...)
segments(as.vector(xi), rep.int(yvals - 0.1, 3L), as.vector(xi),
rep.int(yvals + 0.1, 3L),
rep(seg.col, 3), ...)
title(main = paste0(format(100 * attr(x, "conf.level"),
digits = 2L), "% family-wise confidence level\n"),
xlab = paste("Differences in mean levels of", names(x)[i]))
box()
dev.flush()
on.exit()
}
}
plot.TukeyHSD
it appears that the answer is no. You can always create your own plot function to add that capability. A somewhat simpler option would be to overwrite the black lines showing significant differences with red lines.